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An Efficient Algorithm for Palmprint Based Personal Authentication System with Rotation Invariant Feature Vectors


Affiliations
1 Vel Tech High Tech Dr. Rangarajan Dr. Sakunthala College of Engineering, Chennai, India
2 Government College of Technology, Coimbatore, India
     

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This paper presents a high performance palmprint personal authentication system implementation method with number of experimental result. A major approach for palmprint recognition today is to extract feature vectors corresponding to individual palmprint images and to perform palmprint matching based on some distance metrics. One of the difficult problems in feature-based recognition is that the matching performance is significantly influenced by many parameters in feature extraction process, which may vary depending on environmental factors of image acquisition. The Zernike moment feature extraction plays the main role in the proposed system for different orientation hand image ROI identification. Unsharp filtered palmprint images makes possible to achieve highly robust palmprint recognition. MATLAB 7.9 is used for the system verification. Experimental evaluation using a palmprint image database clearly demonstrates an efficient matching performance of the proposed system.

Keywords

PolyU, Pattern Matching, Unsharp Filter, MATLAB, Zernike Moments, Palmprint.
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  • An Efficient Algorithm for Palmprint Based Personal Authentication System with Rotation Invariant Feature Vectors

Abstract Views: 253  |  PDF Views: 1

Authors

P. Esther Rani
Vel Tech High Tech Dr. Rangarajan Dr. Sakunthala College of Engineering, Chennai, India
R. Shanmuga Lakshmi
Government College of Technology, Coimbatore, India

Abstract


This paper presents a high performance palmprint personal authentication system implementation method with number of experimental result. A major approach for palmprint recognition today is to extract feature vectors corresponding to individual palmprint images and to perform palmprint matching based on some distance metrics. One of the difficult problems in feature-based recognition is that the matching performance is significantly influenced by many parameters in feature extraction process, which may vary depending on environmental factors of image acquisition. The Zernike moment feature extraction plays the main role in the proposed system for different orientation hand image ROI identification. Unsharp filtered palmprint images makes possible to achieve highly robust palmprint recognition. MATLAB 7.9 is used for the system verification. Experimental evaluation using a palmprint image database clearly demonstrates an efficient matching performance of the proposed system.

Keywords


PolyU, Pattern Matching, Unsharp Filter, MATLAB, Zernike Moments, Palmprint.