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Human Identification by Iris Recognition using Artificial Bee Colony Algorithm

M. Benitto Raj, S. JoshuaKumaresan, J. Raja Paul Perinbam

Abstract


The iris which is an internal part of the human eye can be used for human identification. An iris recognition system uses template matching to compare two iris images and generate a match score that reflects their degree of similarity or dissimilarity. Eye apart from iris has useless parts such as eyelid and eyelash. The iris is taken as the region of interest by masking the useless parts and is done by Active Contour Algorithm (ACA). The texture feature in the iris is extracted using Independent Component Analysis (ICA). Artificial Bee Colony (ABC) algorithm which is an evolutionary algorithm is then used to select the best feature from the extracted texture features. By using Hamming Distance the best feature is then compared with the several features of different individuals in the database for identification. For proving the effectiveness and feasibility; we compare the proposed specific feature selection approach with the method without feature selection on a small database. The experimental results show the proposed approach can achieve lower error rates in iris authentication.

Keywords


Active Contour, Feature Extraction, Independent Component Analysis, Artificial Bee Colony Algorithm, Hamming Distance

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References


M.Benitto Raj, S.Joshua Kumaresan and J.Raja Paul Perinbam ―Iris Recognition usin ICA Optimized by Artificial Bee Colony Algorithm‖ Two day National Conference on Emerging Trends in Engineering and Technology(NCETET-2013) 11th and 12th April 2013.

AlaaHilal,BassamDaya and Pierre Beauseroy ―Hough Transform and Active Contour for Enhanced iris Segmentation‖ International Journal of computer science issues,Vol 9,November 2012.

X. Chenyang and J. L. Prince. ―Snakes, Shapes, and Gradient Vector Flow (1998)‖ IEEE Transaction on Image Processing, vol 7(3), pp. 359-369, March 1998.

J. Daugman, "New methods in iris recognition" IEEE Transactions On Systems, Man, and Cybernetics—Part B: Cybernetics, Vol. 37, No. 5, October 2007.

J.Daugman,‖High confidence recognition of persons by iris patterns‖Comput.Lab. Cambridge Univ, IEEE Oct 2001.

DervisKaraboga and BahriyeAkay ―A Comparative Study of Artificial Bee Colony Algorithm‖ Applied Mathematics and Computation. Elsevier 2009.Page no 108-132.

A.K. Jain, R.M. Bolle, and S. Pankanti, Eds., Biometrics: Personal Identification in a networked Society. Norwell, MA: Kluwer, 1999.

R.G. Johnson, ―Can iris patterns be used to identify people?‖, Chemical and Laser Sciences Division LA-12331-PR, Los Alamos National Laboratory, Los Alamos, Calif, 1991.

Kaihua Zhang, Lei Zhang and Huihui Song and Wengang Zhou, ―Active contours with selective local or global segmentation‖ Image and Vision Computing, 2009.

Kevin W. Bowyer, Karen Hollingsworth and Patrick J. Flynn ― Image Understanding For Iris Biometric- A Survey‖ Computer Vision and Image Understanding 110(2),281-307, May2008.

Miao Qi, Yinghua Lu, Jinsong Li, Xiaolu Li, Jun Kong, ―User-Specific Iris Authentication Based on Feature Selection‖, Proc. IEEE International Conference on Computer Science and Software Engineering, 2008, pp: 1040-1043.

Pei-Wei Tsai, Jeng-Shyang Pan, Bin-Yih Liao and Shu-Chuan Chu ―Enhanced Artificial bee Colony Optimization‖ International Journal Of Innovative Computing,Information and Control. Volume 5, December 2009.

RanaForsati, AlirezaMoayedikia and AndishehKeikha― A Novel Approach for Feature Selection Based on the Bee Colony Optimization‖ International Journal of Computer Applications, Volume 43, April 2012.

Salim Bitam, Mohamed Batouche and El-ghazali Talbi ― A Survey on Bee Colony Algorithms ‖IEEE Xplore 978-1-4244-6534-7/10/$26.00.2010 IEEE.

K. Shamaraj, Gulmire and Sanjay Ganorkar ―Iris Recognition Using Independent Component Analysis‖ International Journal for emerging technology and advance engineering, Volume 2,Issue 7 July 2012.

High Standard Casia Iris Database, Biometric Ideal Test http://www.cbsr.ia.ac.cn/english/IrisDatabases.asp


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