Long-term Object Tracking with Instance Specific ProposalsDownload PDFOpen Website

2018 (modified: 07 Mar 2025)ICPR 2018Readers: Everyone
Abstract: Correlation filter based trackers have been extensively investigated for their superior efficiency and fairly good robustness. However, it remains challenging to achieve longterm tracking when the object is under occlusion and severe deformation. In this paper, we propose a tracker named Complementary Learners with Instance-specific Proposals (CLIP). The CLIP tracker consists of three main components, including a translation filter, a scale filter, and an error correction module. Complementary features are incorporated into the translation filter to cope with illumination changes and deformation, and an adaptive updating mechanism is proposed to prevent model corruption. The translation filter aims to provide an excellent real-time inference. Furthermore, the error correction module is activated to correct the localization error by an instance-specific proposal generator, especially when the target suffers from dramatic appearance changes. Experimental results on the OTB, Temple-Color 128 and UAV20L datasets demonstrate that the CLIP tracker performs favorably against existing competitive trackers in term of accuracy and robustness. Moreover, our proposed CLIP tracker runs at the speed of 33 fps on the OTB. It is highly suitable for real-time applications.
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