Graph mode-based contextual kernels for robust SVM tracking

Xi Li, A. Dick, Hanzi Wang, Chunhua Shen, A. Hengel
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引用次数: 42

Abstract

Visual tracking has been typically solved as a binary classification problem. Most existing trackers only consider the pairwise interactions between samples, and thereby ignore the higher-order contextual interactions, which may lead to the sensitivity to complicated factors such as noises, outliers, background clutters and so on. In this paper, we propose a visual tracker based on support vector machines (SVMs), for which a novel graph mode-based contextual kernel is designed to effectively capture the higher-order contextual information from samples. To do so, we first create a visual graph whose similarity matrix is determined by a baseline visual kernel. Second, a set of high-order contexts are discovered in the visual graph. The problem of discovering these high-order contexts is solved by seeking modes of the visual graph. Each graph mode corresponds to a vertex community termed as a high-order context. Third, we construct a contextual kernel that effectively captures the interaction information between the high-order contexts. Finally, this contextual kernel is embedded into SVMs for robust tracking. Experimental results on challenging videos demonstrate the effectiveness and robustness of the proposed tracker.
基于图模型的上下文核鲁棒支持向量机跟踪
视觉跟踪通常作为一个二分类问题来解决。现有的大多数跟踪器只考虑样本之间的成对相互作用,而忽略了高阶上下文相互作用,这可能导致对噪声、离群值、背景杂波等复杂因素的敏感性。本文提出了一种基于支持向量机(svm)的视觉跟踪器,并设计了一种新的基于图模型的上下文核,以有效地捕获样本中的高阶上下文信息。为此,我们首先创建一个可视化图,其相似性矩阵由基线可视化内核确定。其次,在可视化图中发现一组高阶上下文。通过寻找可视化图的模式来解决这些高阶上下文的发现问题。每个图模式对应于一个称为高阶上下文的顶点群落。第三,构建上下文核,有效捕获高阶上下文之间的交互信息。最后,将上下文内核嵌入到支持向量机中进行鲁棒跟踪。挑战性视频的实验结果证明了该跟踪器的有效性和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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