Maximum similarity degree for 2D fuzzy face recognition

Yi Li, Xiaodong Liu
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Abstract

In this paper, a maximum similarity criterion is proposed which is adapted to a new fuzzy face recognition method (namely, 2DFMS). The similarity degree between faces is defined by a nonlinear function. Based on this similarity, an improvement fuzzy membership function is obtained by applying k-nearest neighbor. Then, 2DFMS extracts the features from face images directly so that it will not suffer from the SSS problem. Finally, in the projected space, the test image is identified according to a specific classifier, which is based on a maximum similarity criterion. The whole algorithm is implemented on ORL and Yale face database to demonstrate the effectiveness and robustness.
二维模糊人脸识别的最大相似度
本文提出了一种适用于模糊人脸识别的最大相似度准则(2DFMS)。面之间的相似度由一个非线性函数来定义。基于这种相似性,应用k近邻得到改进的模糊隶属函数。然后,2DFMS直接从人脸图像中提取特征,从而避免了SSS问题。最后,在投影空间中,根据基于最大相似度准则的特定分类器对测试图像进行识别。整个算法在ORL和耶鲁人脸数据库上实现,验证了算法的有效性和鲁棒性。
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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