AFter: Attention-based Fusion Router for RGBT Tracking

4 May 2024  ·  Andong Lu, Wanyu Wang, Chenglong Li, Jin Tang, Bin Luo ·

Multi-modal feature fusion as a core investigative component of RGBT tracking emerges numerous fusion studies in recent years. However, existing RGBT tracking methods widely adopt fixed fusion structures to integrate multi-modal feature, which are hard to handle various challenges in dynamic scenarios. To address this problem, this work presents a novel \emph{A}ttention-based \emph{F}usion rou\emph{ter} called AFter, which optimizes the fusion structure to adapt to the dynamic challenging scenarios, for robust RGBT tracking. In particular, we design a fusion structure space based on the hierarchical attention network, each attention-based fusion unit corresponding to a fusion operation and a combination of these attention units corresponding to a fusion structure. Through optimizing the combination of attention-based fusion units, we can dynamically select the fusion structure to adapt to various challenging scenarios. Unlike complex search of different structures in neural architecture search algorithms, we develop a dynamic routing algorithm, which equips each attention-based fusion unit with a router, to predict the combination weights for efficient optimization of the fusion structure. Extensive experiments on five mainstream RGBT tracking datasets demonstrate the superior performance of the proposed AFter against state-of-the-art RGBT trackers. We release the code in https://github.com/Alexadlu/AFter.

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Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Rgb-T Tracking GTOT AFter Precision 91.6 # 3
Success 78.5 # 1
Rgb-T Tracking LasHeR AFter Precision 70.3 # 9
Success 55.1 # 12
Rgb-T Tracking RGBT210 AFter Precision 87.6 # 1
Success 63.5 # 1
Rgb-T Tracking RGBT234 AFter Precision 90.1 # 3
Success 66.7 # 3

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