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A New Approach in Face Recognition: Duplicating Facial Images Based on Correlation Study

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Published:25 July 2016Publication History

ABSTRACT

In this paper, we describe a new approach in face recognition by which the recognition accuracy can be increased substantially. In our approach a detail correlation study has been made on standard database such as Yale face database. Based on correlation coefficient, face images of individuals are duplicated in train set or test set or in both category. Then face databases are tested with standard face recognition algorithms such as Eigen face, Fischer face, KPCA, ICA and 2DPCA. In all these methods, arrangement of faces based on our approach gives better result. The software used to test all these algorithms is open source Scilab.

References

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  1. A New Approach in Face Recognition: Duplicating Facial Images Based on Correlation Study

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      • Published in

        cover image ACM Other conferences
        KMO '16: Proceedings of the The 11th International Knowledge Management in Organizations Conference on The changing face of Knowledge Management Impacting Society
        July 2016
        339 pages
        ISBN:9781450340649
        DOI:10.1145/2925995

        Copyright © 2016 ACM

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        Association for Computing Machinery

        New York, NY, United States

        Publication History

        • Published: 25 July 2016

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        KMO '16 Paper Acceptance Rate47of96submissions,49%Overall Acceptance Rate47of96submissions,49%

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