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首页> 外文期刊>Journal of information and computational science >A Larger Coefficient Emphasis Framework for Sparse Coding in Face Recognition
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A Larger Coefficient Emphasis Framework for Sparse Coding in Face Recognition

机译:用于面部识别的稀疏编码的更大系数强调框架

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摘要

Sparse representation based classification for face recognition has become a very popular topic in these years. In this paper, a test signal was represented as a sparse linear combination of the predefined dictionary with the sparse coefficients. A novel framework for the image reconstruction with sparse coding was proposed. It filtered the redundancy coding coefficients by selecting a number of largest coding coefficients called Larger Coding Coefficient Emphasis (LCE) to generate the new coding residual. So the novel coding residual was used to reconstruct the test image instead of the standard residual. This larger coefficient emphasis framework, which improves Sparse Representation Based Classification (SRC) and Robust Sparse Coding (RSC), is evaluated on the AR, extended Yale B and FERET face databases and the experiment results show its practical advantages compared with that of SRC and RSC in the face recognition.
机译:近年来,基于稀疏表示的人脸识别分类已成为非常受欢迎的话题。在本文中,将测试信号表示为预定义字典与稀疏系数的稀疏线性组合。提出了一种稀疏编码图像重建的新框架。它通过选择称为最大编码系数加重(LCE)的多个最大编码系数来过滤冗余编码系数,以生成新的编码残差。因此,使用新的编码残差代替标准残差来重建测试图像。在AR,扩展的Yale B和FERET人脸数据库上对这个较大的系数强调框架进行了改进,改进了基于稀疏表示的分类(SRC)和鲁棒稀疏编码(RSC),实验结果表明,与SRC和RSC中的人脸识别。

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