Title :
Better Feature Tracking through Subspace Constraints
Author :
Poling, Bryan ; Lerman, Gilad ; Szlam, Arthur
Author_Institution :
Univ. Of Minnesota, Minneapolis, MN, USA
Abstract :
Feature tracking in video is a crucial task in computer vision. Usually, the tracking problem is handled one feature at a time, using a single-feature tracker like the Kanade-Lucas-Tomasi algorithm, or one of its derivatives. While this approach works quite well when dealing with high-quality video and "strong" features, it often falters when faced with dark and noisy video containing low-quality features. We present a framework for jointly tracking a set of features, which enables sharing information between the different features in the scene. We show that our method can be employed to track features for both rigid and non-rigid motions (possibly of few moving bodies) even when some features are occluded. Furthermore, it can be used to significantly improve tracking results in poorly-lit scenes (where there is a mix of good and bad features). Our approach does not require direct modeling of the structure or the motion of the scene, and runs in real time on a single CPU core.
Keywords :
computer vision; image motion analysis; object tracking; video signal processing; Kanade-Lucas-Tomasi algorithm; computer vision; high-quality video; low-quality features; noisy video; nonrigid motions; rigid motions; single CPU core; single-feature tracker; subspace constraints; video feature tracking; Cameras; Educational institutions; Estimation; Optimization; Subspace constraints; Tracking; Trajectory; Feature Tracking; Low-Rank Regularization; Optical Flow; nonconvex optimization;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.441