Double direction matrix based sparse representation for face recognition

Jian-Xun Mi, Zhiheng Luo, Qiankun Fu, Ailian He
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引用次数: 2

Abstract

Robust sparse representation is a well-known method in computer vision. Several sparse representation models have been proposed and perform well in face recognition. Most of them use transformed images of one dimensional vector, and such implementation ignores structural information between features. To make use of this structural information, this paper presents a novel model for face recognition, called double direction L2,1-norm based sparse representation. Unlike traditional sparse regression measuring differences between test sample and predicted response by vector norm, our model uses matrix norm, L2,1, to calculate residual. Instead of treating each pixel independently, the residual of a pixel is effected by all others in the same line and the same column by means of double direction L2,1-norm. And then, we use the alternating direction method of multipliers approach to optimize proposed model. Just as the L2,1-norm concerns, experiments show that our proposed method is more robust than other sparse methods.
基于双方向矩阵的稀疏表示人脸识别
鲁棒稀疏表示是计算机视觉中一个非常有名的方法。提出了几种稀疏表示模型,并在人脸识别中取得了良好的效果。它们大多使用一维向量变换后的图像,这种实现忽略了特征之间的结构信息。为了利用这种结构信息,本文提出了一种新的人脸识别模型,称为双向L2,基于1范数的稀疏表示。与传统的稀疏回归通过向量范数测量测试样本与预测响应之间的差异不同,我们的模型使用矩阵范数L2,1来计算残差。像素的残差不是单独处理每个像素,而是通过双向L2,1-范数的方式受到同一行同列中所有其他像素的影响。然后,我们使用乘法器方法的交替方向方法来优化所提出的模型。正如L2,1范数所关注的那样,实验表明我们提出的方法比其他稀疏方法更具鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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