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Person re-identification with dictionary learning regularized by stretching regularization and label consistency constraint

机译:通过扩展正则化和标签一致性约束对正则字典学习进行正则化的人员重新识别

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Person re-identification (PRID) is a rather challenging task due to the ambiguity of visual appearance. In this paper, we develop a dictionary-based projection transformation learning approach, where the idea of metric learning and dictionary learning are introduced into a unified framework to make full use of their respective advantages. More specifically, to cope with the challenge caused by dramatic changes in visual appearance, we first project the image features of pedestrian into a discriminative subspace to make the same person from different views with the same coding coefficients. Moreover, we develop a new stretch regularization to make the distance between different pedestrian images larger than that of the same pedestrian images so as to reduce the similarity exhibited by different pedestrian images. Additionally, we develop a label consistency constraint and integrate it into the dictionary learning and then we obtain the ensemble learning model of identity discriminator and dictionary. As a result, the coding coefficient and the corresponding label are bridged and the supervision from the labeled samples is also better exploited. Experimental results on five popular person re-identification benchmarks indicate that the approach developed in this paper has higher identification performance than some state-of-the-art methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:由于视觉外观的歧义,人员重新识别(PRID)是一项颇具挑战性的任务。在本文中,我们开发了一种基于字典的投影转换学习方法,其中将度量学习和字典学习的思想引入了一个统一的框架,以充分利用它们各自的优势。更具体地说,为了应对视觉外观的急剧变化带来的挑战,我们首先将行人的图像特征投影到可区分的子空间中,以使同一个人从不同的视角使用相同的编码系数。此外,我们开发了一种新的拉伸正则化方法,以使不同行人图像之间的距离大于相同行人图像的距离,从而减少不同行人图像表现出的相似性。另外,我们开发了标签一致性约束并将其集成到字典学习中,然后获得身份鉴别器和字典的整体学习模型。结果,编码系数和相应的标记被桥接,并且来自标记样本的监督也被更好地利用。在五个流行人物重新识别基准上的实验结果表明,与某些最新方法相比,本文开发的方法具有更高的识别性能。 (C)2019 Elsevier B.V.保留所有权利。

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