Person Re-identification via Discriminative Accumulation of Local Features

Tetsu Matsukawa, Takahiro Okabe, Yoichi Sato
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引用次数: 10

Abstract

Metric learning to learn a good distance metric for distinguishing different people while being insensitive to intra-person variations is widely applied to person re-identification. In previous works, local histograms are densely sampled to extract spatially localized information of each person image. The extracted local histograms are then concatenated into one vector that is used as an input of metric learning. However, the dimensionality of such a concatenated vector often becomes large while the number of training samples is limited. This leads to an over fitting problem. In this work, we argue that such a problem of over-fitting comes from that it is each local histogram dimension (e.g. color brightness bin) in the same position is treated separately to examine which part of the image is more discriminative. To solve this problem, we propose a method that analyzes discriminative image positions shared by different local histogram dimensions. A common weight map shared by different dimensions and a distance metric which emphasizes discriminative dimensions in the local histogram are jointly learned with a unified discriminative criterion. Our experiments using four different public datasets confirmed the effectiveness of the proposed method.
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基于局部特征判别积累的人物再识别
度量学习在对人的内部变化不敏感的情况下,学习一个好的距离度量来区分不同的人,被广泛应用于人的再识别。在以前的工作中,局部直方图密集采样,提取每个人图像的空间定位信息。然后将提取的局部直方图连接成一个矢量,作为度量学习的输入。然而,在训练样本数量有限的情况下,这种连接向量的维数往往会变得很大。这就导致了过拟合问题。在这项工作中,我们认为这种过拟合问题来自于它是在同一位置的每个局部直方图维度(例如颜色亮度bin)被单独处理,以检查图像的哪一部分更具判别性。为了解决这一问题,我们提出了一种分析不同局部直方图维数共享的判别图像位置的方法。通过统一的判别准则,共同学习不同维度共享的公共权重图和强调局部直方图中判别维度的距离度量。我们使用四个不同的公共数据集进行的实验证实了所提出方法的有效性。
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