使用暹罗卷积神经网络学习分层表示用于人体再识别

K. B. Low, U. U. Sheikh
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引用次数: 1

摘要

人的再识别是将出现在不同摄像机中的一对人以不重叠的视角进行匹配。然而,为了完成这项任务,我们需要克服一些挑战,如照明、视点、姿势和颜色的变化。本文提出了一种基于Siamese卷积神经网络(SCNN)的分层结构的多摄像机网络中人物再识别的新方法。通过使用卷积神经网络学习的非线性变换,将一组人对投射到相同的特征子空间中。学习过程将损失函数最小化,保证了正对之间的相似距离小于下阈值,负对之间的相似距离大于上阈值。由于计算时间的原因,我们的实验使用了较小规模的数据集来实现。由于视点不变行人识别(VIPeR)数据集在该领域的应用非常广泛,因此我们在实验中使用了该数据集。初步结果表明,所提出的SCNN结构具有良好的人物再识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning hierarchical representation using Siamese Convolution Neural Network for human re-identification
Human re-identification is to match a pair of humans appearing in different cameras with non-overlapping views. However, in order to achieve this task, we need to overcome several challenges such as variations in lighting, viewpoint, pose and colour. In this paper, we propose a new approach for person re-identification in multi-camera networks by using a hierarchical structure with a Siamese Convolution Neural Network (SCNN). A set of human pairs is projected into the same feature subspace through a nonlinear transformation that is learned by using a convolution neural network. The learning process minimizes the loss function, which ensures that the similarity distance between positive pairs is less than lower threshold and the similarity distance between negative pairs is higher than upper threshold. Our experiment is achieved by using a small scale of dataset due to the computation time. Viewpoint Invariant Pedestrian Recognition (VIPeR) dataset is used in our experiment, since it is widely employed in this field. Initial results suggest that the proposed SCNN structure has good performance in people re-identification.
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