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Gated Siamese Convolutional Neural Network Architecture for Human Re-identification

机译:门户暹罗卷积神经网络架构,用于人类重新识别

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Matching pedestrians across multiple camera views, known as human re-identification, is a challenging research problem that has numerous applications in visual surveillance. With the resurgence of Convolutional Neural Networks (CNNs), several end-to-end deep Siamese CNN architectures have been proposed for human re-identification with the objective of projecting the images of similar pairs (i.e. same identity) to be closer to each other and those of dissimilar pairs to be distant from each other. However, current networks extract fixed representations for each image regardless of other images which are paired with it and the comparison with other images is done only at the final level. In this setting, the network is at risk of failing to extract finer local patterns that may be essential to distinguish positive pairs from hard negative pairs. In this paper, we propose a gating function to selectively emphasize such fine common local patterns by comparing the mid-level features across pairs of images. This produces flexible representations for the same image according to the images they are paired with. We conduct experiments on the CUHK03, Market-1501 and VIPeR datasets and demonstrate improved performance compared to a baseline Siamese CNN architecture.
机译:匹配的行人跨越多个相机视图,被称为人类重新识别,是一个具有挑战性的研究问题,在视觉监控中具有许多应用。随着卷积神经网络(CNNS)的复苏,已经提出了几个端到端的深度暹罗CNN架构,以便人类重新识别,其目的是将类似的对(即相同身份)的图像突出彼此更靠近和不同的对彼此远离那些。然而,无论与它配对的其他图像如何,当前网络提取每个图像的固定表示,并且与其他图像的比较仅在最终级别完成。在此设置中,网络有可能无法提取更精细的本地模式,这些模式可能是与硬负对对的阳性对的必需的。在本文中,我们提出了一种通过比较图像对图像的中级特征来选择性地强调这种精细普通本地模式。这产生了根据它们与它们配对的图像的相同图像产生灵活的表示。我们对CUHK03,Market-1501和Viper数据集进行实验,并与基线暹罗CNN架构相比展示了改进的性能。

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