Research On Extraction Of Region Of Interest For ID Photo

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Region of interest (ROI) play important roles in image analysis and processing areas. In order to solve the problems of large scale storage and transmission of ID photos, this paper presents an approach to extract the ROI of ID photos. A standard facial training database is established by these extracted images. PCA algorithm extracts facial feature values of the extracted images and applied them to facial recognition. Facial recognition algorithm is efficient to manage these ID photos.

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940-944

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June 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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