Efficient quaternion CUR method for low-rank approximation to quaternion matrix
Abstract: The low-rank quaternion matrix approximation has been successfully applied in many applications involving signal processing and color image processing. However, the cost of quaternion models for generating low-rank quaternion matrix approximation is sometimes considerable due to the computation of the quaternion singular value decomposition (QSVD), which limits their application to real large-scale data. To address this deficiency, an efficient quaternion matrix CUR (QMCUR) method for low-rank approximation is suggested, which provides significant acceleration in color image processing. We first explore the QMCUR approximation method, which uses actual columns and rows of the given quaternion matrix, instead of the costly QSVD. Additionally, two different sampling strategies are used to sample the above-selected columns and rows. Then, the perturbation analysis is performed on the QMCUR approximation of noisy versions of low-rank quaternion matrices. Extensive experiments on both synthetic and real data further reveal the superiority of the proposed algorithm compared with other algorithms for getting low-rank approximation, in terms of both efficiency and accuracy.
- Cheng, D., Kou, K.I.: Generalized sampling expansions associated with quaternion fourier transform. Mathematical Methods in the Applied Sciences 41(11), 4021–4032 (2018) Ell et al. [2014] Ell, T.A., Le Bihan, N., Sangwine, S.J.: Quaternion Fourier Transforms for Signal and Image Processing. John Wiley & Sons, (2014) Le Bihan and Mars [2004] Le Bihan, N., Mars, J.: Singular value decomposition of quaternion matrices: a new tool for vector-sensor signal processing. Signal Processing 84(7), 1177–1199 (2004) Hirose and Yoshida [2012] Hirose, A., Yoshida, S.: Generalization characteristics of complex-valued feedforward neural networks in relation to signal coherence. IEEE Transactions on Neural Networks and Learning Systems 23(4), 541–551 (2012) Zhou et al. [2023] Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ell, T.A., Le Bihan, N., Sangwine, S.J.: Quaternion Fourier Transforms for Signal and Image Processing. John Wiley & Sons, (2014) Le Bihan and Mars [2004] Le Bihan, N., Mars, J.: Singular value decomposition of quaternion matrices: a new tool for vector-sensor signal processing. Signal Processing 84(7), 1177–1199 (2004) Hirose and Yoshida [2012] Hirose, A., Yoshida, S.: Generalization characteristics of complex-valued feedforward neural networks in relation to signal coherence. IEEE Transactions on Neural Networks and Learning Systems 23(4), 541–551 (2012) Zhou et al. [2023] Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Le Bihan, N., Mars, J.: Singular value decomposition of quaternion matrices: a new tool for vector-sensor signal processing. Signal Processing 84(7), 1177–1199 (2004) Hirose and Yoshida [2012] Hirose, A., Yoshida, S.: Generalization characteristics of complex-valued feedforward neural networks in relation to signal coherence. IEEE Transactions on Neural Networks and Learning Systems 23(4), 541–551 (2012) Zhou et al. [2023] Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Hirose, A., Yoshida, S.: Generalization characteristics of complex-valued feedforward neural networks in relation to signal coherence. IEEE Transactions on Neural Networks and Learning Systems 23(4), 541–551 (2012) Zhou et al. [2023] Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. 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[2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. 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IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Hirose, A., Yoshida, S.: Generalization characteristics of complex-valued feedforward neural networks in relation to signal coherence. IEEE Transactions on Neural Networks and Learning Systems 23(4), 541–551 (2012) Zhou et al. [2023] Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. 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[2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. 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The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. 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SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. 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Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Hirose, A., Yoshida, S.: Generalization characteristics of complex-valued feedforward neural networks in relation to signal coherence. IEEE Transactions on Neural Networks and Learning Systems 23(4), 541–551 (2012) Zhou et al. [2023] Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. 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[2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. 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The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhou, H., Zhang, X., Zhang, C., Ma, Q.: Quaternion convolutional neural networks for hyperspectral image classification. Engineering Applications of Artificial Intelligence 123, 106234 (2023) Zhang et al. [2023] Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. 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IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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[2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. 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Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Zhang, M., Ding, W., Li, Y., Sun, J., Liu, Z.: Color image watermarking based on a fast structure-preserving algorithm of quaternion singular value decomposition. Signal Processing 208, 108971 (2023) Li et al. [2020] Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Li, M., Yuan, X., Chen, H., Li, J.: Quaternion discrete fourier transform-based color image watermarking method using quaternion qr decomposition. IEEE Access 8, 72308–72315 (2020) Liu et al. [2023] Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Liu, W., Kou, K.I., Miao, J., Cai, Z.: Quaternion scalar and vector norm decomposition: Quaternion pca for color face recognition. IEEE Transactions on Image Processing 32, 446–457 (2023) Wang et al. [2022] Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Wang, G., Zhang, D., Vasiliev, V.I., Jiang, T.: A complex structure-preserving algorithm for the full rank decomposition of quaternion matrices and its applications. Numerical Algorithms 91(4), 1461–1481 (2022) Dong Zhang and Wang [2024] Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Dong Zhang, C.J. Tongsong Jiang, Wang, G.: A complex structure-preserving algorithm for computing the singular value decomposition of a quaternion matrix and its applications. Numerical Algorithms 95(4), 267–283 (2024) Qi et al. [2022] Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. 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SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Qi, L., Luo, Z., Wang, Q.-W., Zhang, X.: Quaternion matrix optimization: Motivation and analysis. Journal of Optimization Theory and Applications 193(1-3), 621–648 (2022) Zou et al. [2016] Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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[2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. 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Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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[2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Wang, Y.: Quaternion collaborative and sparse representation with application to color face recognition. IEEE Transactions on Image Processing 25(7), 3287–3302 (2016) Zou et al. [2019] Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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[2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zou, C., Kou, K.I., Dong, L., Zheng, X., Tang, Y.Y.: From grayscale to color: Quaternion linear regression for color face recognition. IEEE Access 7, 154131–154140 (2019) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. 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Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Jia et al. [2019] Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. 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The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. 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Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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[2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. 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SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Jia, Z., Ng, M.K., Song, G.: Robust quaternion matrix completion with applications to image inpainting. Numerical Linear Algebra with Applications 26(4), 2245 (2019) Li et al. [2023] Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Li, C., Liu, Y., Wu, F., Che, M.: Randomized block krylov subspace algorithms for low-rank quaternion matrix approximations. Numerical Algorithms, 1–31 (2023) Gai et al. [2015] Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. 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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Gai, S., Yang, G., Wan, M., Wang, L.: Denoising color images by reduced quaternion matrix singular value decomposition. Multidimensional Systems and Signal Processing 26, 307–320 (2015) Huang et al. [2022] Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Huang, C., Li, Z., Liu, Y., Wu, T., Zeng, T.: Quaternion-based weighted nuclear norm minimization for color image restoration. Pattern Recognition 128, 108665 (2022) Jia et al. [2022] Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. 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SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Jia, Z., Jin, Q., Ng, M.K., Zhao, X.: Non-local robust quaternion matrix completion for large-scale color image and video inpainting. IEEE Transactions on Image Processing 31, 3868–3883 (2022) Chen and Ng [2022] Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Chen, J., Ng, M.K.: Color image inpainting via robust pure quaternion matrix completion: Error bound and weighted loss. SIAM Journal on Imaging Sciences 15(3), 1469–1498 (2022) Xu et al. [2023] Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Xu, T., Kong, X., Shen, Q., Chen, Y., Zhou, Y.: Deep and low-rank quaternion priors for color image processing. IEEE Transactions on Circuits and Systems for Video Technology 33(7), 3119–3132 (2023) Chen et al. [2020] Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. 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SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chen, Y., Xiao, X., Zhou, Y.: Low-rank quaternion approximation for color image processing. IEEE Transactions on Image Processing 29, 1426–1439 (2020) Yu et al. [2019] Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yu, Y., Zhang, Y., Yuan, S.: Quaternion-based weighted nuclear norm minimization for color image denoising. Neurocomputing 332, 283–297 (2019) Yang et al. [2021] Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Kou, K.I., Miao, J.: Weighted truncated nuclear norm regularization for low-rank quaternion matrix completion. Journal of Visual Communication and Image Representation 81, 103335 (2021) Yang et al. [2022] Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Yang, L., Miao, J., Kou, K.I.: Quaternion-based color image completion via logarithmic approximation. Information Sciences 588, 82–105 (2022) Miao and Kou [2022] Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Color image recovery using low-rank quaternion matrix completion algorithm. IEEE Transactions on Image Processing 31, 190–201 (2022) Ren et al. [2022] Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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[2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. 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IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Ren, H., Ma, R.-R., Liu, Q., Bai, Z.-J.: Randomized quaternion qlp decomposition for low-rank approximation. Journal of Scientific Computing 92(3), 80 (2022) Miao and Kou [2020] Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Miao, J., Kou, K.I.: Quaternion-based bilinear factor matrix norm minimization for color image inpainting. IEEE Transactions on Signal Processing 68, 5617–5631 (2020) Liu et al. [2022] Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Liu, Q., Ling, S., Jia, Z.: Randomized quaternion singular value decomposition for low-rank matrix approximation. SIAM Journal on Scientific Computing 44(2), 870–900 (2022) Goreinov et al. [1997] Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Goreinov, S.A., Tyrtyshnikov, E.E., Zamarashkin, N.L.: A theory of pseudoskeleton approximations. Linear Algebra and its Applications 261(1), 1–21 (1997) Aldroubi et al. [2019] Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Aldroubi, A., Hamm, K., Koku, A.B., Sekmen, A.: Cur decompositions, similarity matrices, and subspace clustering. Frontiers in Applied Mathematics and Statistics 4 (2019) Lin et al. [2023] Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Lin, P., Peng, S., Xiang, Y., Li, C., Cui, X., Zhang, W.: Structure-oriented cur low-rank approximation for random noise attenuation of seismic data. IEEE Transactions on Geoscience and Remote Sensing 61, 1–13 (2023) Drineas et al. [2008] Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Drineas, P., Mahoney, M.W., Muthukrishnan, S.: Relative-error cur matrix decompositions. SIAM Journal on Matrix Analysis and Applications 30(2), 844–881 (2008) Wang and Zhang [2013] Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Wang, S., Zhang, Z.: Improving cur matrix decomposition and the nyström approximation via adaptive sampling. The Journal of Machine Learning Research 14(1), 2729–2769 (2013) Zhang [1997] Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Zhang, F.: Quaternions and matrices of quaternions. Linear Algebra and its Applications 251, 21–57 (1997) Ling et al. [2022] Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Ling, C., He, H., Qi, L.: Singular values of dual quaternion matrices and their low-rank approximations. Numerical Functional Analysis and Optimization 43(12), 1423–1458 (2022) Wang [2005] Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Wang, Q.-W.: The general solution to a system of real quaternion matrix equations. Computers & Mathematics with Applications 49(5), 665–675 (2005) Drineas et al. [2006] Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Drineas, P., Kannan, R., Mahoney, M.W.: Fast monte carlo algorithms for matrices iii: Computing a compressed approximate matrix decomposition. SIAM Journal on Computing 36(1), 184–206 (2006) Chiu and Demanet [2013] Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013) Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
- Chiu, J., Demanet, L.: Sublinear randomized algorithms for skeleton decompositions. SIAM Journal on Matrix Analysis and Applications 34(3), 1361–1383 (2013)
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