Cross-Modal Pattern-Propagation For Rgb-T Tracking

2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2020)

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摘要
Motivated by our observations on RGB-T data that pattern correlations are high frequently recurred across modalities also along sequence frames, in this paper, we propose a cross-modal pattern-propagation (CMPP) tracking framework to diffuse instance patterns across RGB-T data on spatial domain as well as temporal domain. To bridge RGB-T modalities, the cross-modal correlations on intra-modal paired pattern-affinities are derived to reveal those latent cues between heterogenous modalities. Through the correlations, the useful patterns may be mutually propagated between RGB-T modalities so as to fulfill inter-modal pattern-propagation. Further, considering the temporal continuity of sequence frames, we adopt the spirit of pattern propagation to dynamic temporal domain, in which long-term historical contexts are adaptively correlated and propagated into the current frame for more effective information inheritance. Extensive experiments demonstrate that the effectiveness of our proposed CMPP, and the new state-of-the-art results are achieved with the significant improvements on two RGB-T object tracking benchmarks.
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关键词
useful patterns,inter-modal pattern-propagation,sequence frames,pattern propagation,dynamic temporal domain,RGB-T object tracking benchmarks,RGB-T tracking,RGB-T data,pattern correlations,cross-modal pattern-propagation tracking framework,diffuse instance patterns,cross-modal correlations,intra-modal paired pattern-affinities,heterogenous modalities,CMPP
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