Real-time Visual Tracking Using Sparse Representation
Abstract
The tracker obtains robustness by seeking a sparse representation of the tracking object via norm minimization \cite{Xue_ICCV_09_Track}. However, the high computational complexity involved in the tracker restricts its further applications in real time processing scenario. Hence we propose a Real Time Compressed Sensing Tracking (RTCST) by exploiting the signal recovery power of Compressed Sensing (CS). Dimensionality reduction and a customized Orthogonal Matching Pursuit (OMP) algorithm are adopted to accelerate the CS tracking. As a result, our algorithm achieves a real-time speed that is up to times faster than that of the tracker. Meanwhile, RTCST still produces competitive (sometimes even superior) tracking accuracy comparing to the existing tracker. Furthermore, for a stationary camera, a further refined tracker is designed by integrating a CS-based background model (CSBM). This CSBM-equipped tracker coined as RTCST-B, outperforms most state-of-the-arts with respect to both accuracy and robustness. Finally, our experimental results on various video sequences, which are verified by a new metric---Tracking Success Probability (TSP), show the excellence of the proposed algorithms.
Cite
@article{arxiv.1012.2603,
title = {Real-time Visual Tracking Using Sparse Representation},
author = {Hanxi Li and Chunhua Shen and Qinfeng Shi},
journal= {arXiv preprint arXiv:1012.2603},
year = {2010}
}
Comments
14 pages