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Real Time Face Recognition System

S. Vijiyalakshmi, S. Kaliya Perumal, G. Karthikeyan, U. Ramachandran

Abstract


In this paper, to created a generic based face recognition and detection system using videos and images matching these faces to a precompiled database. Face detection is done using a Haar cascade, and Face recognization is done using a combination of Fisherfaces and PCA analysis, also known as Eigenfaces. The system shows promising performance and processes images quickly even on a system platform.

Keywords


Face Recognition, Face Authentication, Principal Component Analysis, Neural Network, Eigenvector, Eigenface.

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References


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