Face recognition using the Wavelet tree and two-dimensional PCA

ICSP), 2012 IEEE 11th International Conference(2012)

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Abstract
Two-dimensional principal component analysis (2D-PCA) is a fast method for face recognition. The proposed method makes use of 2D-PCA based on two dimensional Wavelet tree matrices composed of the Wavelet approximation coefficients(WTMPCA) as opposed to the traditional 2D-PCA, which is grounded on 2D matrices in the image domain. By applying the three-level Wavelet decomposition, the new 2D matrix is made up of the approximation coefficients. The matrices in the Wavelet domain not only contain the whole information of the images, but also extract the local feature. Finally, the 2D-PCA is used under the new image matrix for face recognition. Experimental results on the ORL and a subset of CAS-PEAL face database show that WTMPCA method achieves 96% accuracy on face recognition using only one principal component vector.
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Key words
approximation theory,face recognition,feature extraction,matrix algebra,principal component analysis,trees (mathematics),vectors,visual databases,wavelet transforms,2d principal component analysis,2d wavelet tree matrices,2d-pca,cas-peal subset face database,orl face database,wtmpca method,image domain,image matrix,local feature extraction,principal component vector,three-level wavelet decomposition,wavelet approximation coefficients,wtmpca,wavelet tree
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