基于目标外观和结构的视觉跟踪局部补丁匹配

Wei Wang, Kun Duan, Tai-Peng Tian, Ting Yu, Ser-Nam Lim, H. Qi
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引用次数: 0

摘要

漂移是基于“检测跟踪”框架的目标视觉跟踪中最困难的问题。由于自我学习,不一致的样本可能会被纳入学习,降低跟踪器的识别能力。本文提出了一种新的跟踪方法,该方法通过三个多层次的协作组件来解决这一问题:高阶全局外观跟踪器提供基本预测,在此基础上,结构保留的低阶局部补丁匹配有助于保证以最小漂移进行精确跟踪。这些局部补丁通过前景/背景分割被有意地部署在前景目标上,这是由超像素段训练的简单高效的分类器实现的。实验结果表明,这三个紧密协作的组件使我们的跟踪器能够实时运行,并在具有挑战性的基准序列上优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual tracking based on object appearance and structure preserved local patches matching
Drift is the most difficult issue in object visual tracking based on framework of “tracking-by-detection”. Due to the self-taught learning, the mis-aligned samples are potentially to be incorporated in learning and degrade the discrimination of the tracker. This paper proposes a new tracking approach that resolves this problem by three multi-level collaborative components: a high-level global appearance tracker provides a basic prediction, upon which the structure preserved low-level local patches matching helps to guarantee precise tracking with minimized drift. Those local patches are deliberately deployed on the foreground object via foreground/background segmentation, which is realized by a simple and efficient classifier trained by super-pixel segments. Experimental results show that the three closely collaborated components enable our tracker runs in real time and performs favourably against state-of-the-art approaches on challenging benchmark sequences.
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