Tagging face in images

Digitized multimedia data do not have any structure in raw form and so is not amenable for information extraction by a machine. Consider the problem of creating structure over images by tagging it with labels which can easily be processed by machines and meaningful to humans. Faces are the most important part of images, we consider problem of tagging them. As an initial step, various face recognition methods including face detection,feature extraction and face recognition are studied and implemented. We are also studying the applicability of descriptive local features of person’s face for face tagging.

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