Although the correlation filter-based trackers achieve the competitive results both on accuracy and robustness, there are still some problems in handling scale variations, object occlusion, fast motions and so on. In this paper, a multi-scale kernel correlation filter algorithm based on random fern detector was proposed. The tracking task was decomposed into the target scale estimation and the translation estimation. At the same time, the Color Names features and HOG features were fused in response level to further improve the overall tracking performance of the algorithm. In addition, an online random fern classifier was trained to re-obtain the target after the target was lost. By comparing with some algorithms such as KCF, DSST, TLD, MIL, CT and CSK, experimental results show that the proposed approach could estimate the object state accurately and handle the object occlusion effectively.
Yue YuanJun ChuLu LengJun MiaoByung‐Gyu Kim
Wen ZhangHu XuelongChunxiao LiTianbao Sun
Xiaofeng LuSong LiYi XuSongyu Yu
Zhuanyang ChenLinjie YangYuan ZhangLuping Wang