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UNSUPERVISED PERSON RE-IDENTIFICATION WITH LOCALITY-CONSTRAINED EARTH MOVER'S DISTANCE

机译:无监督的人重新识别当地限制的地球移动器的距离

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The difficult acquisition of labeled data and the misalignment of local matching are major obstacles to apply person re-identification in real scenarios. To alleviate these problems, we propose an unsupervised method, called locality-constrained Earth Mover's Distance (LC-EMD), to learn the optimal measure between image pairs. Specifically, Gaussian mixture models (GMMs) are learned as signatures. By imposing locality constraints, LC-EMD can naturally achieve partial matching between Gaussian components. Moreover, LC-EMD has the analytical solution which can be efficiently computed. Experiments on two public datasets demonstrate LC-EMD is robust to misalignment and performs better than other unsupervised methods.
机译:难以获得标记的数据和局部匹配的未对准是应用人重新识别的主要障碍。为了缓解这些问题,我们提出了一种无监督的方法,称为地区受限的地球移动器距离(LC-EMD),以学习图像对之间的最佳测量。具体地,高斯混合模型(GMMS)被学习为签名。通过强加地区限制,LC-EMD可以自然地实现高斯组件之间的部分匹配。此外,LC-EMD具有可以有效计算的分析解决方案。两个公共数据集的实验表明LC-EMD是对未对准的强大,并且比其他无监督的方法更好。

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