Papers
Topics
Authors
Recent
Search
2000 character limit reached

Benchmarking and Analysis of Unsupervised Object Segmentation from Real-world Single Images

Published 8 Dec 2023 in cs.CV, cs.AI, cs.LG, and cs.RO | (2312.04947v1)

Abstract: In this paper, we study the problem of unsupervised object segmentation from single images. We do not introduce a new algorithm, but systematically investigate the effectiveness of existing unsupervised models on challenging real-world images. We first introduce seven complexity factors to quantitatively measure the distributions of background and foreground object biases in appearance and geometry for datasets with human annotations. With the aid of these factors, we empirically find that, not surprisingly, existing unsupervised models fail to segment generic objects in real-world images, although they can easily achieve excellent performance on numerous simple synthetic datasets, due to the vast gap in objectness biases between synthetic and real images. By conducting extensive experiments on multiple groups of ablated real-world datasets, we ultimately find that the key factors underlying the failure of existing unsupervised models on real-world images are the challenging distributions of background and foreground object biases in appearance and geometry. Because of this, the inductive biases introduced in existing unsupervised models can hardly capture the diverse object distributions. Our research results suggest that future work should exploit more explicit objectness biases in the network design.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (16)
  1. Arandjelovic R, Zisserman A (2019) Object Discovery with a Copy-Pasting GAN. arXiv:190511369
  2. Bielski A, Favaro P (2019) Emergence of object segmentation in perturbed generative models. NeurIPS
  3. Crawford E, Pineau J (2019) Spatially Invariant Unsupervised Object Detection with Convolutional Neural Networks. AAAI
  4. Eddins S (2011) Binary image convex hull. https://blogsmathworkscom/steve/2011/10/04/binary-image-convex-hull-algorithm-notes/
  5. Huang J, Murphy K (2016) Efficient inference in occlusion-aware generative models of images. ICLR Workshops
  6. Jiang J, Ahn S (2020) Generative neurosymbolic machines. NeurIPS
  7. Kingma DP, Welling M (2014) Auto-Encoding Variational Bayes. ICLR
  8. Piper J, Granum E (1987) Computing distance transformations in convex and non-convex domains. Pattern recognition 20(6):599–615
  9. Polsby DD, Popper RD (1991) The third criterion: Compactness as a procedural safeguard against partisan gerrymandering. Yale L & Pol’y Rev 9
  10. Rand WM (1971) Objective criteria for the evaluation of clustering methods. Journal of the American Statistical Association 66(336):846–850
  11. Rezende DJ, Viola F (2018) Taming vaes. arXiv:181000597
  12. Shannon CE (1948) A mathematical theory of communication. The Bell system technical journal 27(3):379–423
  13. Sobel I, Feldman G (1973) A 3x3 Isotropic Gradient Operator for Image Processing. Pattern Classification and Scene Analysis pp 271–272
  14. Song Z, Yang B (2022) OGC: Unsupervised 3D Object Segmentation from Rigid Dynamics of Point Clouds. NeurIPS
  15. Wertheimer M (1923) Untersuchungen zur Lehre yon der Gestalt. Psychologische Forschung
  16. Yang Y, Yang B (2022) Promising or Elusive? Unsupervised Object Segmentation from Real-world Single Images. NeurIPS
Citations (1)

Summary

No one has generated a summary of this paper yet.

Paper to Video (Beta)

No one has generated a video about this paper yet.

Whiteboard

No one has generated a whiteboard explanation for this paper yet.

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Continue Learning

We haven't generated follow-up questions for this paper yet.

Authors (2)

Collections

Sign up for free to add this paper to one or more collections.