Face Recognition Based on Wavelet Transform Weighted Modular PCA

Image and Signal Processing, 2008. CISP '08. Congress(2008)

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摘要
A new algorithm named wavelet transform weighted modular PCA is proposed for face recognition. Firstly, the training images and the testing image are preprocessed with wavelet transform and the LL band and the LH/HL average band are divided into sub-images with the same size. Secondly, the prospective classify contribution of each sub-model of the two bands are computed. Thirdly, each sub-image of the two bands of the testing image is projected to its corresponding subspace and the confidence values with each image are obtained. Finally, the two confidence values with each image are added with a weight and the total confidence value is obtained to classify the testing image. Experimental results show that the recognition rate of the proposed algorithm is about 4%-6% superior to traditional methods.
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关键词
face recognition,recognition rate,training image,corresponding subspace,new algorithm,hl average band,wavelet transform weighted modular,confidence value,proposed algorithm,testing image,total confidence value,classification algorithms,wavelet transforms,graphics,lighting,feature extraction,data mining,pattern recognition,databases,computer science,nickel,computer graphics,projection,biomedical imaging,signal processing,algorithm design and analysis,shape,artificial neural networks,image recognition,wavelet transform,principal component analysis,testing,covariance matrix
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