Multi-band joint local sparse tracking via wavelet transforms

作者:Han, Guang*; Luo, Heng; Liu, Jixin; Sun, Ning; Du, Kun; Li, Xiaofei
来源:IET Computer Vision, 2016, 10(8): 894-904.
DOI:10.1049/iet-cvi.2016.0079

摘要

A novel multi-band joint local sparse tracking algorithm via wavelet transforms is proposed in this study. The object image may contain rich information of different types; the authors use wavelet transforms to decompose the object image into some sub-band images first. This will help extract the information in different frequency ranges for the object. Then same block operation is executed on all the sub-band images. The l(2), 1 mixed-norm is used to describe the multi-band joint local sparse representation on each patch; it can effectively extract the structural information in different frequency ranges. Thus, more accurate object appearance model can be established. Second, the coefficients on the diagonal of coefficient matrix are extracted for the confidence degrees of the candidate objects in this band, and then the confidence degree results in all the bands are fused to determine the best candidate object in the current frame. This can effectively alleviate the object drifting. Finally, both qualitative and quantitative evaluation results on 15 challenging video sequences demonstrate that the proposed tracking algorithm in this study can achieve better tracking effects compared with the other state-of-the-art algorithms.