首页> 外文会议>Proceedings of 2016 International Conference on Behavioral, Economic, Socio – Cultural Computing >Coupled feature spaces learning with joint graph regularization for person re-identification
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Coupled feature spaces learning with joint graph regularization for person re-identification

机译:结合特征空间学习和联合图正则化进行人员重新识别

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Re-identification of individuals has already drawn growing attentions due to the increasing intelligent visual surveillance. Human signature is quite different over a network of cameras and most related work devotes to selecting human features without any distinction. To address the problem, we propose a novel coupled feature space learning with joint graph regularization in this paper. The proposed method aims to learn a joint graph regularized common feature space in which two projection matrices can be matched. In the procedure, we use l21-norm to select relevant and discriminative features from coupled space simultaneously. A joint graph regular term enhances the relevance of different photos from the same person. Comparisons results show the superiority and efficiency of our proposed method with performance measured in terms of Cumulative Match Characteristic curves (CMC) on three challenging datasets.
机译:由于越来越多的智能视觉监控,对个人的重新识别已经引起了越来越多的关注。在摄像机网络中,人的签名有很大不同,大多数相关工作致力于毫无区别地选择人的特征。为了解决这个问题,我们在本文中提出了一种带有联合图正则化的新型耦合特征空间学习。所提出的方法旨在学习一个联合图正则化的公共特征空间,其中两个投影矩阵可以匹配。在该过程中,我们使用21范数从耦合空间中同时选择相关特征和判别特征。联合图正则项可以增强来自同一个人的不同照片的相关性。比较结果表明,在三个具有挑战性的数据集上,我们提出的方法的优越性和效率以及通过累积匹配特征曲线(CMC)衡量的性能。

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