DocumentCode :
1485085
Title :
Robust Visual Tracking and Vehicle Classification via Sparse Representation
Author :
Xue Mei ; Haibin Ling
Author_Institution :
Intel Corp, Chandler, AZ, USA
Volume :
33
Issue :
11
fYear :
2011
Firstpage :
2259
Lastpage :
2272
Abstract :
In this paper, we propose a robust visual tracking method by casting tracking as a sparse approximation problem in a particle filter framework. In this framework, occlusion, noise, and other challenging issues are addressed seamlessly through a set of trivial templates. Specifically, to find the tracking target in a new frame, each target candidate is sparsely represented in the space spanned by target templates and trivial templates. The sparsity is achieved by solving an ℓ1-regularized least-squares problem. Then, the candidate with the smallest projection error is taken as the tracking target. After that, tracking is continued using a Bayesian state inference framework. Two strategies are used to further improve the tracking performance. First, target templates are dynamically updated to capture appearance changes. Second, nonnegativity constraints are enforced to filter out clutter which negatively resembles tracking targets. We test the proposed approach on numerous sequences involving different types of challenges, including occlusion and variations in illumination, scale, and pose. The proposed approach demonstrates excellent performance in comparison with previously proposed trackers. We also extend the method for simultaneous tracking and recognition by introducing a static template set which stores target images from different classes. The recognition result at each frame is propagated to produce the final result for the whole video. The approach is validated on a vehicle tracking and classification task using outdoor infrared video sequences.
Keywords :
Bayes methods; image sequences; least squares approximations; noise; particle filtering (numerical methods); target tracking; vehicles; video signal processing; Bayesian state inference; casting tracking; least-squares problem; noise; nonnegativity constraints; occlusion; outdoor infrared video sequences; particle filter framework; robust visual tracking; sparse approximation; sparse representation; trivial templates; vehicle classification; Least squares approximation; Noise; Pixel; Robustness; Target tracking; Visualization; Visual tracking; compressive sensing; ell_1 minimization.; particle filter; simultaneous tracking and recognition; sparse representation;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2011.66
Filename :
5740923
Link To Document :
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