Person re-identification (ReID) is to identify pedestrians observed from different camera views based on visual appearance. It is a challenging task due to large pose variations, complex background clutters and severe occlusions. Recently, human pose estimation by predicting joint locations was largely improved in accuracy. It is reasonable to use pose estimation results for handling pose variations and background clutters, and such attempts have obtained great improvement in ReID performance. However, we argue that the pose information was not well utilized and hasn't yet been fully exploited for person ReID. In this work, we introduce a novel framework called Attention-Aware Compositional Network (AACN) for person ReID. AACN consists of two main components: Pose-guided Part Attention (PPA) and Attention-aware Feature Composition (AFC). PPA is learned and applied to mask out undesirable background features in pedestrian feature maps. Furthermore, pose-guided visibility scores are estimated for body parts to deal with part occlusion in the proposed AFC module. Extensive experiments with ablation analysis show the effectiveness of our method, and state-of-the-art results are achieved on several public datasets, including Market-1501, CUHK03, CUHK01, SenseReID, CUHK03-NP and DukeMTMC-reID.


翻译:个人再识别(ReID)是指根据视觉外观从不同的相机视图中观测到行人,这是一项具有挑战性的任务,因为存在巨大的变异、复杂的背景杂乱和严重的隔绝,最近,通过预测联合地点的人的构成估计在准确性方面大有改进,使用处理变异和背景杂乱的估计数是合理的,这种尝试在ReID性能方面已有很大改进。然而,我们认为,这种成像信息没有得到很好的利用,尚未为人再识别充分利用。在这项工作中,我们为人再识别引入了一个称为注意-警告组成网络(AACN)的新框架。ACN由两个主要部分组成:受制部分注意(POPA)和注意-觉悟特征组成(AFC)。PA被学习和应用来掩盖行人特征图中不良的背景特征。此外,为处理拟议的AFC模块中部分的封闭,对身体部分的受人指导的可见度进行了估计。我们进行了广泛的关系分析,显示我们的方法的有效性,包括CU-MC、SMHH03、S-NU-HS-03、S-CS-HNS-SD、SNA-K-K-HARDAD、SD-K-K-SD-SD-K-S-SD-HARD-SDADAD-SD-SD-S-S-S-S-K-K-K-K-SD-S-SDMARD-HD-HD-HD-HD-03 取得若干公共分析结果。

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