Face Recognition using PCA and Eigen Face Approach

paper an approach to the detection and identification of human faces is presented and then recognizes the person by comparing characteristics of the face to those of known individuals is described. General Terms A face recognition system using the Principal Component Analysis (PCA) algorithm was implemented. The algorithm is based on an eigen faces approach which represents a PCA method in which a small set of significant features are used to describe the variation between face images. Experimental results for different numbers of eigen faces are shown to verify the viability of the proposed method. Keywordsrecognition, PCA ,Eigen face.

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