Low-latency Visual Previews of Large Synchrotron Micro-CT Datasets
Abstract: The unprecedented rate at which synchrotron radiation facilities are producing micro-computed (micro-CT) datasets has resulted in an overwhelming amount of data that scientists struggle to browse and interact with in real-time. Thousands of arthropods are scanned into micro-CT within the NOVA project, producing a large collection of gigabyte-sized datasets. In this work, we present methods to reduce the size of this data, scaling it from gigabytes to megabytes, enabling the micro-CT dataset to be delivered in real-time. In addition, arthropods can be identified by scientists even after implementing data reduction methodologies. Our initial step is to devise three distinct visual previews that comply with the best practices of data exploration. Subsequently, each visual preview warrants its own design consideration, thereby necessitating an individual data processing pipeline for each. We aim to present data reduction algorithms applied across the data processing pipelines. Particularly, we reduce size by using the multi-resolution slicemaps, the server-side rendering, and the histogram filtering approaches. In the evaluation, we examine the disparities of each method to identify the most favorable arrangement for our operation, which can then be adjusted for other experiments that have comparable necessities. Our demonstration proved that reducing the dataset size to the megabyte range is achievable without compromising the arthropod's geometry information.
- S.-Y. Chung, J.-S. Kim, D. Stephan, and T.-S. Han, “Overview of the use of micro-computed tomography (micro-ct) to investigate the relation between the material characteristics and properties of cement-based materials,” Construction and Building Materials, vol. 229, p. 116843, 2019.
- B. D. Arhatari, A. W. Stevenson, D. Thompson, A. Walsh, T. Fiala, G. Ruben, N. Afshar, S. Ozbilgen, T. Feng, S. Mudie, et al., “Micro-computed tomography beamline of the australian synchrotron: Micron-size spatial resolution x-ray imaging,” Applied Sciences, vol. 13, no. 3, p. 1317, 2023.
- T. Bicer, D. Gürsoy, R. Kettimuthu, F. De Carlo, and I. T. Foster, “Optimization of tomographic reconstruction workflows on geographically distributed resources,” Journal of synchrotron radiation, vol. 23, no. 4, pp. 997–1005, 2016.
- T. Van de Kamp, A. Ershov, T. dos Santos Rolo, A. Riedel, and T. Baumbach, “Insect imaging at the ANKA synchrotron radiation facility,” Entomologie heute, vol. 25, pp. 147–160, 2013.
- S. Schmelzle, M. Heethoff, V. Heuveline, P. Lösel, J. Becker, F. Beckmann, F. Schluenzen, J. U. Hammel, A. Kopmann, W. Mexner, M. Vogelgesang, N. Tan Jerome, O. Betz, R. Beutel, B. Wipfler, A. Blanke, S. Harzsch, M. Hörnig, T. Baumbach, and T. van de Kamp, “The NOVA project: maximizing beam time efficiency through synergistic analyses of SRμ𝜇\muitalic_μCT data,” in Developments in X-Ray Tomography XI, vol. 10391, pp. 10391 – 10391 – 17, International Society for Optics and Photonics, 2017.
- F. Brun, L. Massimi, M. Fratini, D. Dreossi, F. Billé, A. Accardo, R. Pugliese, and A. Cedola, “Syrmep tomo project: a graphical user interface for customizing ct reconstruction workflows,” Advanced structural and chemical imaging, vol. 3, no. 1, pp. 1–9, 2017.
- T. van de Kamp, P. Vagovič, T. Baumbach, and A. Riedel, “A biological screw in a beetle’s leg,” Science, vol. 333, no. 6038, pp. 52–52, 2011.
- T. van de Kamp, A. H. Schwermann, T. dos Santos Rolo, P. D. Lösel, T. Engler, W. Etter, T. Faragó, J. Göttlicher, V. Heuveline, A. Kopmann, et al., “Parasitoid biology preserved in mineralized fossils,” Nature Communications, vol. 9, no. 1, p. 3325, 2018.
- P. D. Lösel, T. van de Kamp, A. Jayme, A. Ershov, T. Faragó, O. Pichler, N. Tan Jerome, N. Aadepu, S. Bremer, S. A. Chilingaryan, M. Heethoff, A. Kopmann, J. Odar, S. Schmelzle, M. Zuber, J. Wittbrodt, T. Baumbach, and V. Heuveline, “Introducing biomedisa as an open-source online platform for biomedical image segmentation,” Nature communications, vol. 11, no. 1, p. 5577, 2020.
- N. Tan Jerome, S. Chilingaryan, A. Shkarin, A. Kopmann, M. Zapf, A. Lizin, and T. Bergmann, “WAVE: A 3D online previewing framework for big data archives,” in VISIGRAPP, 2017.
- N. Tan Jerome, Low-latency big data visualisation. KIT Scientific Publishing, 2019.
- N. Tan Jerome and A. Kopmann, “Digital visual exploration library,” in VISIGRAPP, 2018.
- J. M. Noguera and J.-R. Jiménez, Visualization of very large 3D volumes on mobile devices and WebGL. Václav Skala-UNION Agency, 2012.
- N. Tan Jerome, Z. Ateyev, S. Schmelzle, S. Chilingaryan, and A. Kopmann, “Real-time local noise filter in 3-d visualization of ct data,” IEEE Transactions on Nuclear Science, vol. 66, no. 7, pp. 1296–1303, 2019.
- J. Edmonds, “Matroids and the greedy algorithm,” Mathematical programming, vol. 1, no. 1, pp. 127–136, 1971.
- D. Ioannou, W. Huda, and A. F. Laine, “Circle recognition through a 2d hough transform and radius histogramming,” Image and vision computing, vol. 17, no. 1, pp. 15–26, 1999.
- D. Applebaum, Probability and information: An integrated approach. Cambridge University Press, 1996.
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