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arxiv 2012.04176 v1 pith:XTSXPDJG submitted 2020-12-08 cs.CV

Multi-modal Visual Tracking: Review and Experimental Comparison

classification cs.CV
keywords trackingmulti-modalbenchmarksdifferentresearchreviewtrackersvisual
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Visual object tracking, as a fundamental task in computer vision, has drawn much attention in recent years. To extend trackers to a wider range of applications, researchers have introduced information from multiple modalities to handle specific scenes, which is a promising research prospect with emerging methods and benchmarks. To provide a thorough review of multi-modal track-ing, we summarize the multi-modal tracking algorithms, especially visible-depth (RGB-D) tracking and visible-thermal (RGB-T) tracking in a unified taxonomy from different aspects. Second, we provide a detailed description of the related benchmarks and challenges. Furthermore, we conduct extensive experiments to analyze the effectiveness of trackers on five datasets: PTB, VOT19-RGBD, GTOT, RGBT234, and VOT19-RGBT. Finally, we discuss various future directions from different perspectives, including model design and dataset construction for further research.

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