基于视觉显著性的人物再识别

Y. Liu, Yunlian Shao, F. Sun
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引用次数: 17

摘要

人员再识别一直是智能网络监控的重要研究方向。人体再识别的难点在于姿态、视点、光照变化和遮挡。在本文中,我们提出了一种基于显著性的方法,该方法模拟了人类大脑的识别过程,以解决这些问题。当人们看到一张图片时,他们倾向于关注突出的区域,这些区域的信息在进一步的匹配和识别过程中更具决定性。这种所谓的视觉注意机制早已在图像分割、跟踪、检测和识别中得到研究和应用。为了模拟这种独特的机制,我们首先计算了表示每个像素显著性的显著性图,然后根据每个像素的显著性赋予权重,提取了显著性图加权的HSV直方图。我们还设计了另一个特征,突出色,来解决遮挡问题。通过巧妙地结合这两个特点,我们的方法实现了最先进的表演。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Person re-identification based on visual saliency
Person re-identification has long been a significant research direction in intelligent network surveillance. The challenging issues in person re-identification consist in pose, viewpoint and illumination changes and occlusions. In this paper, we propose a saliency based approach, which simulates the recognition process of the human brain, to tackle these issues. When people see a picture, they tend to focus on the salient areas and information in those areas is more determinant in the further matching and identification process. This so-called visual attention mechanism has long been studied and used in image segmentation, tracking, detection and recognition. To simulate this distinctive mechanism, we first calculate the saliency map which indicates the conspicuity of each pixel, and then we extract the saliency map weighted HSV histograms by giving each pixel a weight according to its saliency. We also design another feature, the salient colors, to address the occlusion problem. By opportunely combining these two features, our approach achieved state of the art performances.
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