Dual-Path Model for Person Re-Identification Under Cloth Changing

Junhao Zheng, Xiaoman Hu, Tianyi Xiang, P. Chan
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引用次数: 1

Abstract

Most of the existing person re-identification (ReID) methods relies heavily on a person's clothes since clothing information is the clear and remarkable visual feature when the face of a person is unclear. However, in reality, people does not always wear the same cloth across camera views. Even worse, an adversary may change the clothes aiming to evade the identification. Some studies confirms that clothes changing downgrades the existing ReID methods significantly. The current ReID method considering clothes-changing does not fully utilize the person discriminant features, which may reduce its accuracy. This paper presents a dual-path model to learn the robust features under clothes changing and also the discriminant features for ReID from a RGB image and its contour sketch image respectively. The appearance and shape features of a person extracted by the two branches of our model are then combined to make a decision. The clothing information is eliminated from the appearance features by encouraging the similarity between the learned appearance and shape features. The experimental results on the PRCC dataset demonstrate that our model achieves higher performance under clothes changing compared to state-of-the-art ReID methods.
换布下人物再识别的双路径模型
由于服装信息是人的面部不清晰时最明显的视觉特征,现有的人再识别方法大多依赖于人的服装信息。然而,在现实中,人们并不总是穿着同样的衣服穿过镜头。更糟糕的是,对手可能会改变衣服,以逃避识别。一些研究证实,换衣服显著降低了现有的ReID方法。目前考虑换衣的ReID方法没有充分利用人的区别特征,可能会降低其准确性。本文提出了一种双路径模型,分别从RGB图像及其轮廓草图图像中学习服装变换下的鲁棒特征和ReID的判别特征。然后将模型的两个分支提取的人的外观和形状特征结合起来进行决策。通过鼓励学习到的外观特征和形状特征之间的相似性,从外观特征中消除服装信息。在PRCC数据集上的实验结果表明,与最先进的ReID方法相比,我们的模型在换衣服时实现了更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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