Weighted Fisher Non-negative Matrix Factorization for Face Recognition

Yong Zhang, Jianhu Guo
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引用次数: 3

Abstract

In this paper, we extend the Fisher Non-negative Matrix Factorization (FNMF) to Weighted FNMF (WFNMF). The goal of this technique is to improve the performance of FNMF-based face recognition method under varying expressions, varying illumination, and especially for the case of partial occlusions. An objective function is defined by incorporating weighting into the cost of FNMF decomposition in order to emphasize parts of the data matrix to be approximated. Weighted iterative scheme is derived from FNMF algorithm by incorporating weights into the FNMF update rules. In particular, When applied to face recognition, WFNMF employed a face-centered weighting function in order that as many discriminate features as possible at the center of faces are extracted. Experimental results are presented to compare WFNMF with the FNMF, LNMF, NMF and PCA methods for face recognition, which demonstrates advantages of WFNMF.
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加权Fisher非负矩阵分解人脸识别
本文将Fisher非负矩阵分解(FNMF)推广到加权FNMF (WFNMF)。该技术的目标是提高基于fnmf的人脸识别方法在不同表情、不同光照下的性能,特别是在部分遮挡的情况下。通过在FNMF分解的代价中加入权重来定义目标函数,以强调需要逼近的数据矩阵部分。在FNMF算法的基础上,在FNMF更新规则中加入权重,推导出加权迭代算法。特别地,当应用于人脸识别时,WFNMF采用了以人脸为中心的加权函数,以便在人脸中心提取尽可能多的区别特征。实验结果表明,WFNMF与FNMF、LNMF、NMF和PCA等人脸识别方法进行了比较,证明了WFNMF的优势。
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