Synergistic-aware cascaded association and trajectory refinement for multi-object tracking
Image credit: Hui Li摘要
Multi-object tracking (MOT) is a pivotal research area in computer vision. Effectively tracking objects in scenarios with frequent occlusions and crowded scenes has become a key challenge in MOT tasks. Existing tracking-by-detection (TbD) methods often rely on simple two-frame association techniques. However, in situations involving scale transformation or requiring long-term association, frequent occlusion between objects can lead to ID switches, especially in scenes with dense or highly intersecting objects. Therefore, we propose a synergistic-aware cascaded association and trajectory refinement method (SCTrack) for multi-object tracking. In the data association stage, we propose a synergistic-aware cascaded association method to construct a multi-perception affinity matrix for object association, and introduce the multi-frame collaborative distance calculation to enhance the robustness. To address the problem of trajectory fragmentation, we propose a dynamic confidence-driven trajectory refinement post-processing method. This method integrates confidence and feature information to calculate trajectory association, repair fragmented trajectories, and improve the overall robustness of the tracking algorithm. Extensive experiments on the MOT17, MOT20, and DanceTrack datasets validate SCTrack’s competitive performance.
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出版物
Image and Vision Computing
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讲师
硕士生导师,硕博连读毕业于中国海洋大学的计算机应用技术专业,是中国计算机学会会员和山东省人工智能学会会员,主持一项国家自然科学基金青年项目,参与一项山东省自然科学基金面上项目,主要研究方向为机器学习和计算机视觉
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