Face recognition using kernel principal component analysis and genetic algorithms

Yankun Zhang, Chong-qing Liu
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引用次数: 11

Abstract

Kernel principal component analysis (KPCA) as a powerful nonlinear feature extraction method has proven as a preprocessing step for classification algorithm. A face recognition approach based on KPCA and genetic algorithms (GAs) is proposed. By the use of the polynomial functions as a kernel function in KPCA, the high order relationships can be utilized and the nonlinear principal components can be obtained. After we obtain the nonlinear principal components, we use GAs to select the optimal feature set for classification. At the recognition stage, we employed linear support vector machines (SVM) as classifier for the recognition tasks. Two face databases were used to test our algorithm and higher recognition rates were obtained which show that our algorithm is effective.
基于核主成分分析和遗传算法的人脸识别
核主成分分析(KPCA)作为一种强大的非线性特征提取方法,已被证明是分类算法的预处理步骤。提出了一种基于KPCA和遗传算法的人脸识别方法。在KPCA中,利用多项式函数作为核函数,可以利用高阶关系,得到非线性主成分。在得到非线性主成分后,利用遗传算法选择最优特征集进行分类。在识别阶段,我们使用线性支持向量机(SVM)作为识别任务的分类器。用两个人脸数据库对算法进行了测试,获得了较高的识别率,证明了算法的有效性。
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