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Auteurs principaux: Zhang, Shang, Zhang, Huanbin, Feng, Dali, Cui, Yujie, Xiong, Ruoyan, He, Cen
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2505.04088
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author Zhang, Shang
Zhang, Huanbin
Feng, Dali
Cui, Yujie
Xiong, Ruoyan
He, Cen
author_facet Zhang, Shang
Zhang, Huanbin
Feng, Dali
Cui, Yujie
Xiong, Ruoyan
He, Cen
contents Thermal infrared (TIR) object tracking often suffers from challenges such as target occlusion, motion blur, and background clutter, which significantly degrade the performance of trackers. To address these issues, this paper pro-poses a novel Siamese Motion Mamba Tracker (SMMT), which integrates a bidirectional state-space model and a self-attention mechanism. Specifically, we introduce the Motion Mamba module into the Siamese architecture to ex-tract motion features and recover overlooked edge details using bidirectional modeling and self-attention. We propose a Siamese parameter-sharing strate-gy that allows certain convolutional layers to share weights. This approach reduces computational redundancy while preserving strong feature represen-tation. In addition, we design a motion edge-aware regression loss to improve tracking accuracy, especially for motion-blurred targets. Extensive experi-ments are conducted on four TIR tracking benchmarks, including LSOTB-TIR, PTB-TIR, VOT-TIR2015, and VOT-TIR 2017. The results show that SMMT achieves superior performance in TIR target tracking.
format Preprint
id arxiv_https___arxiv_org_abs_2505_04088
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SMMT: Siamese Motion Mamba with Self-attention for Thermal Infrared Target Tracking
Zhang, Shang
Zhang, Huanbin
Feng, Dali
Cui, Yujie
Xiong, Ruoyan
He, Cen
Computer Vision and Pattern Recognition
Thermal infrared (TIR) object tracking often suffers from challenges such as target occlusion, motion blur, and background clutter, which significantly degrade the performance of trackers. To address these issues, this paper pro-poses a novel Siamese Motion Mamba Tracker (SMMT), which integrates a bidirectional state-space model and a self-attention mechanism. Specifically, we introduce the Motion Mamba module into the Siamese architecture to ex-tract motion features and recover overlooked edge details using bidirectional modeling and self-attention. We propose a Siamese parameter-sharing strate-gy that allows certain convolutional layers to share weights. This approach reduces computational redundancy while preserving strong feature represen-tation. In addition, we design a motion edge-aware regression loss to improve tracking accuracy, especially for motion-blurred targets. Extensive experi-ments are conducted on four TIR tracking benchmarks, including LSOTB-TIR, PTB-TIR, VOT-TIR2015, and VOT-TIR 2017. The results show that SMMT achieves superior performance in TIR target tracking.
title SMMT: Siamese Motion Mamba with Self-attention for Thermal Infrared Target Tracking
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.04088