基于鲁棒部分匹配的视觉跟踪局部遮挡处理

Tianzhu Zhang, K. Jia, Changsheng Xu, Yi Ma, N. Ahuja
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引用次数: 117

摘要

基于局部的视觉跟踪由于其对局部遮挡的鲁棒性而具有优势。然而,如何有效地利用单个零件的置信度分数来构建鲁棒跟踪器仍然是一个具有挑战性的问题。在本文中,我们通过局部排列矩阵的优化建立多帧部分对应关系的位置约束低秩稀疏学习方法来实现多帧各部分同时匹配。提出的零件匹配跟踪器(PMT)具有许多吸引人的特性。(1)利用时空位置约束特性进行鲁棒零件匹配。(2)结合多帧局部局部的低秩稀疏结构信息,对局部局部局部进行联合匹配,能有效处理遮挡或噪声引起的局部局部外观变化。(3)提出的PMT模型内置了利用多模式目标模板的机制,可以更好地处理跟踪中遇到遮挡时模板更新的困境。这与仅在一对帧之间进行部分匹配的现有方法形成了对比。我们评估PMT,并在具有挑战性的基准上与10种流行的最先进的方法进行比较。实验结果表明,PMT始终优于现有的跟踪器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Partial Occlusion Handling for Visual Tracking via Robust Part Matching
Part-based visual tracking is advantageous due to its robustness against partial occlusion. However, how to effectively exploit the confidence scores of individual parts to construct a robust tracker is still a challenging problem. In this paper, we address this problem by simultaneously matching parts in each of multiple frames, which is realized by a locality-constrained low-rank sparse learning method that establishes multi-frame part correspondences through optimization of partial permutation matrices. The proposed part matching tracker (PMT) has a number of attractive properties. (1) It exploits the spatial-temporal locality-constrained property for robust part matching. (2) It matches local parts from multiple frames jointly by considering their low-rank and sparse structure information, which can effectively handle part appearance variations due to occlusion or noise. (3) The proposed PMT model has the inbuilt mechanism of leveraging multi-mode target templates, so that the dilemma of template updating when encountering occlusion in tracking can be better handled. This contrasts with existing methods that only do part matching between a pair of frames. We evaluate PMT and compare with 10 popular state-of-the-art methods on challenging benchmarks. Experimental results show that PMT consistently outperform these existing trackers.
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