DocumentCode
1344023
Title
Motion Segmentation in the Presence of Outlying, Incomplete, or Corrupted Trajectories
Author
Rao, Shankar ; Tron, Roberto ; Vidal, René ; Ma, Yi
Author_Institution
HRL Labs., LLC, Malibu, CA, USA
Volume
32
Issue
10
fYear
2010
Firstpage
1832
Lastpage
1845
Abstract
In this paper, we study the problem of segmenting tracked feature point trajectories of multiple moving objects in an image sequence. Using the affine camera model, this problem can be cast as the problem of segmenting samples drawn from multiple linear subspaces. In practice, due to limitations of the tracker, occlusions, and the presence of nonrigid objects in the scene, the obtained motion trajectories may contain grossly mistracked features, missing entries, or corrupted entries. In this paper, we develop a robust subspace separation scheme that deals with these practical issues in a unified mathematical framework. Our methods draw strong connections between lossy compression, rank minimization, and sparse representation. We test our methods extensively on the Hopkins155 motion segmentation database and other motion sequences with outliers and missing data. We compare the performance of our methods to state-of-the-art motion segmentation methods based on expectation-maximization and spectral clustering. For data without outliers or missing information, the results of our methods are on par with the state-of-the-art results and, in many cases, exceed them. In addition, our methods give surprisingly good performance in the presence of the three types of pathological trajectories mentioned above. All code and results are publicly available at http://perception.csl.uiuc.edu/coding/motion/.
Keywords
expectation-maximisation algorithm; image segmentation; image sequences; motion estimation; pattern clustering; sparse matrices; spectral analysers; Hopkins155 motion segmentation database; affine camera model; expectation-maximization methods; image sequence; lossy compression; motion sequences; motion trajectories; multiple linear subspaces; pathological trajectories; rank minimization; robust subspace separation; sparse representation; spectral clustering; tracked feature point trajectories; Cameras; Computer vision; Image segmentation; Image sequences; Layout; Minimization methods; Motion segmentation; Robustness; Tracking; Trajectory; Motion segmentation; error correction; incomplete data; lossy compression; matrix rank minimization.; sparse representation; subspace separation;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2009.191
Filename
5342432
Link To Document