Title :
Object Tracking via Robust Multitask Sparse Representation
Author :
Yancheng Bai ; Ming Tang
Author_Institution :
Nat. Lab. of Pattern Recognition, Inst. of Autom., Beijing, China
Abstract :
Sparse representation has been applied to the object tracking problem. Mining the self-similarities between particles via multitask learning can improve tracking performance. However, some particles may be different from others when they are sampled from a large region. Imposing all particles share the same structure may degrade the results. To overcome this problem, we propose a tracking algorithm based on robust multitask sparse representation (RMTT) in this letter. When we learn the particle representations, we decompose the sparse coefficient matrix into two parts in our algorithm. Joint sparse regularization is imposed on one coefficient matrix while element-wise sparse regularization is imposed on another matrix. The former regularization exploits self-similarities of particles while the later one considers the differences between them. Experiments on the benchmark data show the superior performance over other state-of-art algorithms.
Keywords :
computer vision; data mining; image representation; learning (artificial intelligence); object tracking; sparse matrices; RMTT; computer vision; element-wise sparse regularization; joint sparse regularization; multitask learning; object tracking problem; particle representations; robust multitask sparse representation; self-similarity mining; sparse coefficient matrix; tracking performance improvement; Joints; Matrix decomposition; Object tracking; Robustness; Signal processing algorithms; Sparse matrices; Target tracking; Element-wise sparse regularization; Sparse representation; joint sparse regularization;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2014.2320291