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Face Recognition Based on Wavelet Transform, Singular Value Decomposition and Kernel Principal Component Analysis

机译:基于小波变换,奇异值分解和内核主成分分析的人脸识别

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Combined with wavelet transform, Singular Value Decomposition and Kernel Principal Component Analysis, a method for face recognition is presented. Firstly, the wavelet transformation is used to reduce the dimension of the face picture. Then, SVD is used to subtract the features of the lowest resolution subimage, and the singular value feature vector is maped onto the feature space with kpca and obtains nonlinear feature. Finally, face recognition can be realized according to BP neural network method. Experimental results on ORL and YALE face-databases show that the recognition rate by the proposed method is higher than that by KPCA, SVD, WT-KPCA and WT-SVD respectively.
机译:结合小波变换,奇异值分解和内核主成分分析,呈现了一种面部识别方法。首先,使用小波变换来减小面部图像的尺寸。然后,SVD用于减去最低分辨率的子像序的特征,并且奇异值特征向量被映射到具有KPCA的特征空间并获得非线性特征。最后,可以根据BP神经网络方法实现人脸识别。 ORL和YOLE面部数据库的实验结果表明,所提出的方法的识别率分别高于KPCA,SVD,WT-KPCA和WT-SVD。

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