基于关联滤波和深度学习的单目标跟踪算法的性能

ZhongMing Liao, Azlan B. Ismail
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引用次数: 0

摘要

视觉目标跟踪是计算机视觉领域的一个重要研究内容。应用非常广泛。在计算机视觉领域,深度学习已经取得了显著的成果。它突破了许多传统算法难以解决的复杂问题。因此,从不同角度回顾基于深度学习的视觉目标跟踪算法是很重要的。本文紧跟着目标跟踪算法的跟踪框架,详细讨论了传统的视觉目标跟踪方法、基于相关滤波的主流单目标跟踪算法和基于深度学习的视频单目标跟踪算法。在OTB100和VOT2018基准数据集上进行了实验,并对实验数据进行了分析,得出了两种具有最优跟踪性能的视觉单目标跟踪算法。最后,对跟踪算法的未来发展进行了展望。
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Performance of Correlational Filtering and Deep Learning Based Single Target Tracking Algorithms
Visual target tracking is an important research element in the field of computer vision. The applications are very wide. In terms of the computer vision field, deep learning has achieved remarkable results. It has broken through many complex problems that are difficult to be solved by traditional algorithms. Therefore, reviewing the visual target tracking algorithms based on deep learning from different perspectives is important. This paper closely follows the tracking framework of target tracking algorithms and discusses in detail the traditional visual target tracking methods, the mainstream single target tracking algorithms based on correlation filtering, and the video single target tracking algorithms based on deep learning. Experiments were conducted on OTB100 and VOT2018 benchmark datasets, and the experimental data obtained were analysed to derive two visual single-target tracking algorithms with optimal tracking performance. Finally, the future development of tracking algorithms is envisioned.  
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