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arxiv 2308.16386 v1 pith:JGLON7DS submitted 2023-08-31 cs.CV

RGB-T Tracking via Multi-Modal Mutual Prompt Learning

classification cs.CV
keywords trackinglearningmodalitiespromptbeencomputationalcostsfusion
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Object tracking based on the fusion of visible and thermal im-ages, known as RGB-T tracking, has gained increasing atten-tion from researchers in recent years. How to achieve a more comprehensive fusion of information from the two modalities with fewer computational costs has been a problem that re-searchers have been exploring. Recently, with the rise of prompt learning in computer vision, we can better transfer knowledge from visual large models to downstream tasks. Considering the strong complementarity between visible and thermal modalities, we propose a tracking architecture based on mutual prompt learning between the two modalities. We also design a lightweight prompter that incorporates attention mechanisms in two dimensions to transfer information from one modality to the other with lower computational costs, embedding it into each layer of the backbone. Extensive ex-periments have demonstrated that our proposed tracking ar-chitecture is effective and efficient, achieving state-of-the-art performance while maintaining high running speeds.

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  1. Group Orthogonal Low-Rank Adaptation for RGB-T Tracking

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    GOLA reduces redundancy in low-rank adaptation for RGB-T tracking by using SVD-based partitioning and inter-group orthogonal constraints to enable complementary feature learning, outperforming prior methods on four be...