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Person Reidentification by Joint Local Distance Metric and Feature Transformation

机译:联合局部距离度量和特征变换的人员识别

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摘要

Person reidentification is of great importance in visual surveillance and multiperson tracking across multiple camera views. Two fundamental problems are critical for person reidentification: 1) how to account for appearance variation or feature transformation caused by viewpoint changes and 2) how to learn a discriminative distance metric for reidentification. In this paper, we propose an algorithm in which both feature transformation and metric learning are exploited and jointly optimized. We learn local models from subsets of training samples with regularization imposed by the global model which is trained among the entire data set. The learned local models enhance the discriminative strength and generalization ability. Experimental results on the Viewpoint Invariant PEdestrian Eecognition, Queen Mary University of London ground reidentification, CUHK01, and CUHK03 benchmark data sets show that the proposed sample-specific view-invariant approach performs favorably against the state-of-the-art person reidentification methods.
机译:人员识别在跨多个摄像机视图的视觉监视和多人跟踪中非常重要。两个基本问题对于人员重新识别至关重要:1)如何解决因视点变化而引起的外观变化或特征转换,以及2)如何学习用于重新识别的判别距离度量。在本文中,我们提出了一种算法,其中特征转换和度量学习都得到了利用和共同优化。我们从训练样本的子集中学习局部模型,并由在整个数据集中训练的全局模型强加正则化。学习的局部模型增强了判别强度和泛化能力。对观点不变PE行人认知,伦敦女王大学地面识别,CUHK01和CUHK03基准数据集的实验结果表明,所提出的特定于样本的观点不变方法相对于最新的人识别方法表现良好。

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