FACE RECOGNITION TECHNIQUES: CLASSIFICATION AND COMPARISONS

Human brains can remember and recognize a vast array of faces, getting a computer to do the same is difficult but in modern world there would be many uses of such systems. Face reorganization has been a fast growing, challenging and interesting area in real time application. It can be widely use for image and film processing; this requires computational models for the identification of the face. This model should be easy and simple when implemented. In this paper we will review the different methods for face recognition, their advantages and disadvantages.

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