Hierarchical Refined Local Associations for Robust Person Re-Identification

N. Perwaiz, M. Fraz, M. Shahzad
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引用次数: 9

Abstract

Person re-identification is the process to identify a person from images/ videos captured from different nonoverlapping cameras in an autonomous way. The biological vision scheme emphasis on local discriminative cues in addition to the global appearance of a person for re-identification. The local cues are helpful to identify a person even if viewed at different scales and with different backgrounds. To emphasize on local cues, in this paper we present a refined association scheme for local parts of the images. The proposed scheme eliminates the effects of scale differences and background noise for automated person re-identification. Our approach divides the image of a person in horizontal strips and vertical sub-patches. A hierarchical refined associations based network (HRAN) is introduced to establish the refined associations among local segments of given images. In the first phase, the associations are established among horizontal strips of two images. In the next phase, the vertical sub-patches of associated horizontal strips are aligned/ linked with each other. Background noise and scale differences between images are addressed effectively using the proposed two-step mechanism. The triplet loss is used to optimize the refined local associations among images. A different weighting scheme is used for local and global losses for optimization of proposed model. The evaluation results of proposed methodology on two publicly available large scale datasets Market-1501 and DukeMTMC-ReID verified the effectiveness of proposed refined alignment method.
基于层次精细化局部关联的鲁棒人物再识别
人的再识别是指从不同的非重叠摄像机拍摄的图像/视频中自动识别一个人的过程。生物视觉方案强调局部判别线索,除了一个人的整体外观,以重新识别。即使在不同的尺度和不同的背景下,局部线索也有助于识别一个人。为了强调局部线索,本文提出了一种针对图像局部部分的改进关联方案。该方案消除了尺度差异和背景噪声对自动识别人员身份的影响。我们的方法将一个人的图像分成水平条和垂直子块。提出了一种基于层次的精细关联网络(HRAN),用于在给定图像的局部段之间建立精细关联。在第一阶段,在两幅图像的水平条之间建立关联。在下一阶段,相关水平条带的垂直子斑块相互对齐/链接。利用所提出的两步机制有效地解决了图像之间的背景噪声和尺度差异。使用三元组损失优化图像之间的精细局部关联。为了优化模型,对局部损失和全局损失采用了不同的加权方案。在两个公开的大型数据集Market-1501和DukeMTMC-ReID上的评估结果验证了所提出的精细化对准方法的有效性。
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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