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Comparative Study of PCA, ICA, LDA using SVM Classifier

机译:使用SVM分类器比较PCA,ICA,LDA

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—Feature representation and classification are two key steps for face recognition. We compared three automated methods for face recognition using different method for feature extraction: PCA (Principle Component Analysis), LDA (Linear Discriminate Analysis), ICA (Independent Component Analysis) and SVM (Support Vector Machine) were used for classification. The experiments were implemented on two face databases, The ATT Face Database [1] and the Indian Face Database (IFD) [2] with the combination of methods (PCA+ SVM), (ICA+SVM) and (LDA+SVM) showed that (LDA+SVM) method had a higher recognition rate than the other two methods for face recognition.
机译:—特征表示和分类是面部识别的两个关键步骤。我们比较了三种使用不同特征提取方法的自动面部识别方法:将PCA(原理成分分析),LDA(线性判别分析),ICA(独立成分分析)和SVM(支持向量机)用于分类。实验是在ATT人脸数据库[1]和印度人脸数据库(IFD)[2]这两个人脸数据库上进行的,结合了方法(PCA + SVM),(ICA + SVM)和(LDA + SVM), (LDA + SVM)方法具有比其他两种人脸识别方法更高的识别率。

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