Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4946359 | Knowledge-Based Systems | 2016 | 23 Pages |
Abstract
Robustness and efficiency are the two main goals of existing trackers. Most robust trackers are implemented with combined features or models accompanied with a high computational cost. To achieve a robust and efficient tracking performance, we propose a multi-view correlation tracker to do tracking. On one hand, the robustness of the tracker is enhanced by the multi-view model, which fuses several features and selects the more discriminative features to do tracking. On the other hand, the correlation filter framework provides a fast training and efficient target locating. The multiple features are well fused on the model level of correlation filer, which are effective and efficient. In addition, we raise a simple but effective scale-variation detection mechanism, which strengthens the stability of scale variation tracking. We evaluate our tracker on online tracking benchmark (OTB) and two visual object tracking benchmarks (VOT2014, VOT2015). These three datasets contains more than 100 video sequences in total. On all the three datasets, the proposed approach achieves promising performance.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Xin Li, Qiao Liu, Zhenyu He, Hongpeng Wang, Chunkai Zhang, Wen-Sheng Chen,