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Improved Metric Learning Algorithm for Person Re-Identification Based on Asymmetric Metric

机译:基于非对称度量的改进的度量学习算法用于人员重新识别

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Person re-identification(re-ID) is becoming a hot research topic because of its value in both machine learning and video surveillance applications. In order to improve the robustness of Metric Learning by Accelerated Proximal Gradient(MLAPG), a person re-ID algorithm, called Asymmetric -MLAPG, is proposed on the basis of asymmetric metric. Unlike traditional metric learning which ignores the taking environment of the person images, asymmetric metric learning aims to find the feature matrix of each camera and map the vectors of images to a common space. In this paper, we rebuilt MLAPG model by Asymmetric metric. In addition to adding a regularization term which controls the influence of inconsistency of metric, there are two more regularization terms in order to control the offset of feature matrix from the initial value. Experiments show that the Asymmetric -MLAPG algorithm can achieve the better recognition rate and wide applicability on commonly used person re-ID data sets.
机译:由于人员重新识别(re-ID)在机器学习和视频监视应用程序中的价值,因此它正成为一个热门研究课题。为了通过加速近距离梯度算法(MLAPG)提高度量学习的鲁棒性,在非对称度量的基础上,提出了一种人非身份识别算法,即非对称-MLAPG。与传统的度量学习忽略了人像的拍摄环境不同,非对称度量学习的目的是找到每个摄像机的特征矩阵,并将图像的向量映射到公共空间。在本文中,我们通过非对称度量重建了MLAPG模型。除了添加可控制度量不一致影响的正则项外,还有两个正则项可控制特征矩阵与初始值的偏移。实验表明,非对称-MLAPG算法可以在常用的人re-ID数据集上获得更好的识别率和广泛的适用性。

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