Person re-identification via efficient inference in fully connected CRF

Jiuqing Wan, Menglin Xing
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引用次数: 1

Abstract

In this paper, we address the problem of person re-identification problem, i.e., retrieving instances from gallery which are generated by the same person as the given probe image. This is very challenging because the person's appearance usually undergoes significant variations due to changes in illumination, camera angle and view, background clutter, and occlusion over the camera network. In this paper, we assume that the matched gallery images should not only be similar to the probe, but also be similar to each other, under suitable metric. We express this assumption with a fully connected CRF model in which each node corresponds to a gallery and every pair of nodes are connected by an edge. A label variable is associated with each node to indicate whether the corresponding image is from target person. We define unary potential for each node using existing feature calculation and matching techniques, which reflect the similarity between probe and gallery image, and define pairwise potential for each edge in terms of a weighed combination of Gaussian kernels, which encode appearance similarity between pair of gallery images. The specific form of pairwise potential allows us to exploit an efficient inference algorithm to calculate the marginal distribution of each label variable for this dense connected CRF. We show the superiority of our method by applying it to public datasets and comparing with the state of the art.
全连接CRF中基于高效推理的人员再识别
在本文中,我们解决了人的再识别问题,即从图库中检索由与给定探测图像相同的人生成的实例。这是非常具有挑战性的,因为人的外表通常会由于光照、相机角度和视角、背景杂波和相机网络遮挡的变化而发生重大变化。在本文中,我们假设匹配的图库图像不仅与探头相似,而且在合适的度量下彼此相似。我们用一个完全连接的CRF模型来表达这个假设,其中每个节点对应一个画廊,每对节点由一条边连接。标签变量与每个节点相关联,以指示相应的图像是否来自目标人员。我们使用现有的特征计算和匹配技术定义每个节点的一元势,这反映了探针和图库图像之间的相似性,并根据高斯核的加权组合定义每个边缘的成对势,这编码了对图库图像之间的外观相似性。成对势的特定形式使我们能够利用一种有效的推理算法来计算这种密集连接CRF的每个标签变量的边际分布。我们通过将其应用于公共数据集并与最先进的状态进行比较来显示我们方法的优越性。
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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