鲁棒视觉跟踪的结构相关滤波器

Si Liu, Tianzhu Zhang, Xiaochun Cao, Changsheng Xu
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引用次数: 165

摘要

在本文中,我们提出了一种新的结构相关滤波器(SCF)模型用于鲁棒视觉跟踪。该模型在相关滤波跟踪器中考虑了基于部件的跟踪策略,并利用各部件的循环移位进行运动建模,以保持目标物体的结构。与现有的相关滤波器跟踪器相比,本文提出的跟踪器具有以下优点:(1)由于采用局部策略,学习到的结构相关滤波器对局部遮挡的敏感性较低,具有计算效率和鲁棒性。(2)学习后的滤波器既能像传统的相关滤波器那样将局部与背景区分开来,又能通过空间约束利用局部之间的内在联系来保持目标结构。(3)学习到的相关滤波器不仅使大多数部分具有相似的运动,而且能够容忍具有不同运动的异常部分。对具有挑战性的基准图像序列的定性和定量评估表明,所提出的SCF跟踪算法与几种最先进的方法相比表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structural Correlation Filter for Robust Visual Tracking
In this paper, we propose a novel structural correlation filter (SCF) model for robust visual tracking. The proposed SCF model takes part-based tracking strategies into account in a correlation filter tracker, and exploits circular shifts of all parts for their motion modeling to preserve target object structure. Compared with existing correlation filter trackers, our proposed tracker has several advantages: (1) Due to the part strategy, the learned structural correlation filters are less sensitive to partial occlusion, and have computational efficiency and robustness. (2) The learned filters are able to not only distinguish the parts from the background as the traditional correlation filters, but also exploit the intrinsic relationship among local parts via spatial constraints to preserve object structure. (3) The learned correlation filters not only make most parts share similar motion, but also tolerate outlier parts that have different motion. Both qualitative and quantitative evaluations on challenging benchmark image sequences demonstrate that the proposed SCF tracking algorithm performs favorably against several state-of-the-art methods.
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