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Weighted sparse representation using a learned distance metric for face recognition

机译:使用学习的距离度量进行面部识别的加权稀疏表示

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This paper presents a novel weighted sparse representation classification for face recognition with a learned distance metric (WSRC-LDM) which learns a Mahalanobis distance to calculate the weight and code the testing face. The Mahalanobis distance is learned by using the information-theoretic metric learning (ITML) which helps to define a better weight used in WSRC. In the meantime, the learned distance metric takes advantage of the classification rule of SRC which helps the proposed method classify more accurately. Extensive experiments verify the effectiveness of the proposed method.
机译:本文提出了一种新的加权稀疏表示分类,用于具有学习距离度量(WSRC-LDM)的人脸识别,该学习距离度量学习马哈拉诺比斯距离以计算权重并编码测试人脸。通过使用信息理论度量学习(ITML)来学习马氏距离,该信息有助于定义WSRC中使用的更好权重。同时,学习的距离度量利用SRC的分类规则,有助于所提出的方法更准确地进行分类。大量实验证明了该方法的有效性。

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