基于自组织特征映射和支持向量机的人脸识别

Liang Chaoyang, Liu Fang, Xie Yin-xiang
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引用次数: 7

摘要

自组织特征映射是拓扑有序的。当给定视觉环境的近似值作为输入时,它会发展出逼真的皮层结构,这是一种模拟人脸识别能力发展的有效方法。支持向量机(svm)是一种分类器,具有很高的泛化能力。在本文中,我们将这两种技术结合起来解决人脸识别问题。在两种不同的人脸数据库上进行实验,以较低的分类成本获得了很高的识别率。由于SOM/SVM联合使用的分类器分类结果与仅使用SVM相差不大,但SOM/SVM的分类器成本仅为支持向量机的十分之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face recognition using self-organizing feature maps and support vector machines
Self-organizing feature maps are topologically ordered. One develops realistic cortical structures when given approximations of the visual environment as input, and are an effective way to model the development of face recognition abilities. Support vector machines (SVMs) are classifiers, which have demonstrated high generalization capabilities. In this paper, we combine these two techniques for face recognition problem. Experiments were made on two different face databases, achieving very high recognition rates with relative low classification cost. As the results using the combination SOM/SVM were not very far from only with SVM, but the classifier cost of SOM/SVM is one-tenth of with SVM.
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