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Group lasso based collaborative representation for face recognition

机译:基于组套索的协作表示,用于人脸识别

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Based on the idea of collaborative representation, a novel approach CRC-GLasso is proposed for face recognition. Our main contributions lie in two aspects: 1) Instead of sparse representation, collaborative representation is employed to compute sparse representations of face images to solve the `lack of samples' problem. The reason is that face images of different classes share similarities, and some face images from one class may be very helpful to represent those from another class. 2) As the regularization term of collaborative representation, group lasso can be used to construct our objective function, which can make collaborative representation well-structured according to two physical meanings of group lasso: 1) The coefficients of training samples from certain class can be enhanced. 2) The coefficients of most classes can be alleviated. Our proposed method is applied to the well-known public face databases, AR database, and the experimental results show that CRC-GLasso outperforms other state-of-the-art algorithms for face recognition, such as SRC, CRC, KSVD, D-KSVD and LC-KSVD.
机译:基于协同表示的思想,提出了一种用于人脸识别的新方法CRC-GLasso。我们的主要贡献在于两个方面:1)代替稀疏表示,协作表示被用来计算人脸图像的稀疏表示,以解决“样本不足”的问题。原因是不同类别的面部图像具有相似性,并且来自一个类别的一些面部图像可能非常有助于表示来自另一个类别的面部图像。 2)作为协作表示的正则化术语,组套索可用于构建我们的目标函数,根据组套索的两种物理含义可以使协作表示具有良好的结构:1)某类训练样本的系数可以为增强。 2)可以减轻大多数类别的系数。我们提出的方法应用于著名的人脸数据库,AR数据库,实验结果表明,CRC-GLasso优于其他最新的人脸识别算法,例如SRC,CRC,KSVD,D- KSVD和LC-KSVD。

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