Unsupervised Person Re-Identification by Camera-Aware Similarity Consistency Learning

Ancong Wu, Weishi Zheng, J. Lai
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引用次数: 93

Abstract

For matching pedestrians across disjoint camera views in surveillance, person re-identification (Re-ID) has made great progress in supervised learning. However, it is infeasible to label data in a number of new scenes when extending a Re-ID system. Thus, studying unsupervised learning for Re-ID is important for saving labelling cost. Yet, cross-camera scene variation is a key challenge for unsupervised Re-ID, such as illumination, background and viewpoint variations, which cause domain shift in the feature space and result in inconsistent pairwise similarity distributions that degrade matching performance. To alleviate the effect of cross-camera scene variation, we propose a Camera-Aware Similarity Consistency Loss to learn consistent pairwise similarity distributions for intra-camera matching and cross-camera matching. To avoid learning ineffective knowledge in consistency learning, we preserve the prior common knowledge of intra-camera matching in the pretrained model as reliable guiding information, which does not suffer from cross-camera scene variation as cross-camera matching. To learn similarity consistency more effectively, we further develop a coarse-to-fine consistency learning scheme to learn consistency globally and locally in two steps. Experiments show that our method outperformed the state-of-the-art unsupervised Re-ID methods.
基于摄像机感知相似性一致性学习的无监督人再识别
针对监控中不相交摄像机视角下的行人匹配问题,人的再识别(Re-ID)在监督学习方面取得了很大进展。然而,在扩展Re-ID系统时,在许多新场景中标记数据是不可行的。因此,研究Re-ID的无监督学习对于节省标签成本具有重要意义。然而,跨相机场景变化是无监督Re-ID的一个关键挑战,如照明、背景和视点变化,这些变化会导致特征空间的域移位,导致不一致的成对相似度分布,从而降低匹配性能。为了减轻跨摄像机场景变化的影响,我们提出了一种摄像机感知的相似度一致性损失算法来学习摄像机内匹配和跨摄像机匹配的一致的成对相似度分布。为了避免一致性学习中学习到无效的知识,我们保留了预训练模型中相机内匹配的先验常识作为可靠的指导信息,不像跨相机匹配那样受到跨相机场景变化的影响。为了更有效地学习相似性一致性,我们进一步开发了一种从粗到细的一致性学习方案,分两步学习全局一致性和局部一致性。实验表明,我们的方法优于最先进的无监督重识别方法。
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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