Tianzhu ZhangKui JiaChangsheng XuYi MaNarendra Ahuja
Part-based visual tracking is advantageous due to its robustness against partial occlusion. However, how to effectively exploit the confidence scores of individual parts to construct a robust tracker is still a challenging problem. In this paper, we address this problem by simultaneously matching parts in each of multiple frames, which is realized by a locality-constrained low-rank sparse learning method that establishes multi-frame part correspondences through optimization of partial permutation matrices. The proposed part matching tracker (PMT) has a number of attractive properties. (1) It exploits the spatial-temporal locality-constrained property for robust part matching. (2) It matches local parts from multiple frames jointly by considering their low-rank and sparse structure information, which can effectively handle part appearance variations due to occlusion or noise. (3) The proposed PMT model has the inbuilt mechanism of leveraging multi-mode target templates, so that the dilemma of template updating when encountering occlusion in tracking can be better handled. This contrasts with existing methods that only do part matching between a pair of frames. We evaluate PMT and compare with 10 popular state-of-the-art methods on challenging benchmarks. Experimental results show that PMT consistently outperform these existing trackers.
Gaetano Di CaterinaJohn J. Soraghan
Guang ShuAli DehghanOmar OreifejEmily HandMubarak Shah
Kamlesh VermaDebashis GhoshHimanshu SinghSandeep BishtZahir Ahmed AnsariRajeev MaratheAvnish Kumar
Xiaofeng LuJunhao ZhangLi SongRui LeiHengli LuNam Ling