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Face recognition methods based on principal component analysis and feedforward neural networks

机译:基于主成分分析和前馈神经网络的人脸识别方法

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In this paper, human face as biometric is considered. Original method of feature extraction from image data is introduced using MLP (multilayer perceptron) and PCA (principal component analysis). This method is used in human face recognition system and results are compared to face recognition system using PCA directly, to a system with direct classification of input images by MLP and RBF (radial basis function) networks, and to a system using MLP as a feature extractor and MLP and RBF networks in the role of classifier. In order to obtain deeper insight into eight presented methods, also visualizations of internal representation of input data obtained by neural networks are presented.
机译:本文考虑将人脸作为生物特征识别技术。引入了使用MLP(多层感知器)和PCA(主要成分分析)从图像数据中提取特征的原始方法。此方法用于人脸识别系统,并将结果与​​直接使用PCA的人脸识别系统,通过MLP和RBF(径向基函数)网络对输入图像进行直接分类的系统以及使用MLP作为特征的系统进行比较提取器以及MLP和RBF网络在分类器中的作用。为了获得对介绍的八种方法的更深入的了解,还介绍了由神经网络获得的输入数据内部表示的可视化。

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