基于遗传算法优化的模糊LDA人脸识别

A. Khoukhi, S. F. Ahmed
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引用次数: 9

摘要

本文通过对模糊鱼脸分类方法的改进,解决了人脸识别问题。在传统方法中,每个人脸与一个类的关系被认为是清晰的。模糊鱼脸方法使用基于k -最近邻(KNN)算法的隶属度分级,将每个脸模式逐步分配给一个类。该方法进一步改进,将每个人脸图案的隶属度纳入类间和类内散点矩阵的计算中,称为完全模糊LDA (CFLDA)。模糊鱼面和cfda方法都使用了Fuzzy- knn算法。本工作旨在通过改进隶属函数的参数来改进类隶属度的分配。采用遗传算法通过搜索参数空间来优化这些参数。在此基础上,利用遗传算法寻找训练阶段需要考虑的最优近邻数量。实验是在ORL (Olivetti研究实验室)人脸图像数据库上进行的,结果表明,与在同一数据库上应用的其他技术和文献报道的结果相比,识别率得到了一致的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy LDA for face recognition with GA based optimization
The paper addresses the face recognition problem by modifying the Fuzzy Fisherface classification method. In conventional methods, the relationship of each face to a class is assumed to be crisp. The Fuzzy Fisherface method introduces a gradual level of assignment of each face pattern to a class, using a membership grading based upon the K-Nearest Neighbor (KNN) algorithm. This method was further modified by incorporating the membership grade of each face pattern into the calculation of the between-class and with-in class scatter matrices, termed as Complete Fuzzy LDA (CFLDA). Both Fuzzy Fisherface and CFLDA methods utilize the Fuzzy-KNN algorithm. The present work aims at improving the assignment of class membership by improving the parameters of the membership functions. A genetic algorithm is employed to optimize these parameters by searching the parameter space. Furthermore, the genetic algorithm is used to find the optimal number of nearest neighbors to be considered during the training phase. The experiments were performed on the ORL (Olivetti Research Laboratory) face image database and the results show consistent improvement in the recognition rate when compared to the results from other techniques applied on the same database and reported in literature.
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