Research Area: | Uncategorized | Year: | 2007 | ||||
Type of Publication: | Article | Keywords: | face recognition, image matching, image representation, neural netsautoassociative neural network, automatic face recognition, edginess-based representation, face image, face verification, human faces, template matching | ||||
Authors: | Anil Kumar Sao, B. Yegnanarayana | ||||||
Abstract: | |||||||
Human faces are similar in structure with minor differences from person to person. These minor differences may average out while trying to synthesize the face image of a given person, or while building a model of face image in automatic face recognition. In this paper, we propose a template-matching approach for face verification, which neither synthesizes the face image nor builds a model of the face image. Template matching is performed using an edginess-based representation of the face image. The edginess-based representation of face images is computed using 1-D processing of images. An approach is proposed based on autoassociative neural network models to verify the identity of a person. The issues of pose and illumination in face verification are addressed. |
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