多层特征组合视觉跟踪

Heng Fan, Jinhai Xiang, Fuchuan Ni
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引用次数: 2

摘要

本文提出了一种基于多层特征组合的跟踪方法。在每一层中,目标被分割成局部补丁,不同层的补丁大小不同。通过这种方式,每一层都包含了物体不同的局部信息,这些信息是相互补充的。对于每一层,局部斑块用稀疏编码表示。我们将这些稀疏码组合成每个层的稀疏码直方图(HSC)。为了处理外观变化,我们改进了稀疏代码直方图,得到了一个改进的稀疏代码直方图(MHSC),用来表示每一层。我们将多层的MHSCs组合成目标的特征向量。为了提高特征向量的鲁棒性,由于每一层在不同情况下具有不同的判别能力,因此对各层赋予了不同的权重。在贝叶斯框架中,我们通过寻找与参考点相似度最高的候选点来实现视觉跟踪。实验表明,该方法优于几种最先进的跟踪器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilayer feature combination for visual tracking
This paper proposes a new tracking method based on multilayer feature combination. In each layer, the target is segmented into local patches, and patch sizes of different layers are different. Through this way, each layer contains different local information of the object, which are mutually complementary for each other. For each layer, the local patches are represented with sparse codes. We combine these sparse codes into a histogram of sparse codes (HSC) for each layer. To handle appearance variations, we improve the HSC and obtain a modified histogram of sparse codes (MHSC), which is used to represent each layer. We combine the MHSCs of multilayer to form the feature vector of the object. To improve the robustness of the feature vector, different weights are assigned to various layers because each layer has different discriminative power under different cases. Within Bayesian framework, we achieve visual tracking by finding the candidate which has the highest similarity with the reference. Experiments demonstrate that the proposed method outperforms several state-of-the-art trackers.
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