Libin XuPyoungwon KimMengjie WangJinfeng PanXiaomin YangMingliang Gao
Abstract The discriminative correlation filter (DCF)-based tracking methods have achieved remarkable performance in visual tracking. However, the existing DCF paradigm still suffers from dilemmas such as boundary effect, filter degradation, and aberrance. To address these problems, we propose a spatio-temporal joint aberrance suppressed regularization (STAR) correlation filter tracker under a unified framework of response map. Specifically, a dynamic spatio-temporal regularizer is introduced into the DCF to alleviate the boundary effect and filter degradation, simultaneously. Meanwhile, an aberrance suppressed regularizer is exploited to reduce the interference of background clutter. The proposed STAR model is effectively optimized using the alternating direction method of multipliers (ADMM). Finally, comprehensive experiments on TC128, OTB2013, OTB2015 and UAV123 benchmarks demonstrate that the STAR tracker achieves compelling performance compared with the state-of-the-art (SOTA) trackers.
Dinesh ElayaperumalYoung Hoon Joo
Youmin YanXixian GuoJin TangChenglong LiXin Wang
Junnan WangZhenhong JiaLai Hui-chengJie YangNikola Kasabov
Dinesh ElayaperumalYoung Hoon Joo