6th International Young Scientist Congress (IYSC-2021) and workshop on Intellectual Property Rights on 8th and 9th May 2021.  10th International Science Congress (ISC-2020) will be Postponed to 8th and 9th December 2021 Due to COVID-19.  International E-publication: Publish Projects, Dissertation, Theses, Books, Souvenir, Conference Proceeding with ISBN.  International E-Bulletin: Information/News regarding: Academics and Research

Security System Based on Iris Recognition

Author Affiliations

  • 1 Communication Engineering, Anna University Chennai Regional Center Madurai

Res. J. Engineering Sci., Volume 2, Issue (3), Pages 16-21, March,26 (2013)

Abstract

Iris recognition is a biometric system for access control that uses the most unique characteristic of the human body, the iriemployed in automated border crossings, national ID systems, etc. of iris recognition system based on stationary images using NI Laband localization of iris using canny edge detection is performed. And normalization of iris is performed using the Gabor filter. Local binary pattern (LBP) is used for feature vectors extraction and Learning Vector Quantization (LVQ) performs classification. Here, matching is performed using the hamming distance. Also we create a Labinformation of the users. All the images used in this paper were collected from the Chinese Academy Automation (CASIA) iris database VI.0 with 108 subjects in it.

References

  1. Adams W.K. Kong Member, IEEE, David Zhang, Fellow, IEEE, and Mohamed S. Kamel, Fellow, IEEE, An Analysis of Iriscode, IEEE transactions on image processing, 19(2),(2010)
  2. Amol D. Rahulkar and Raghunath S. Holambe, Half-Iris Feature Extraction and Recognition Using a New Class of Biorthogonal Triplet Half-Band Filter Bank and Flexible k-out-of-n:A Postclassifier, IEEE Trans. on information forensics and security, 7(1), (2012)
  3. Karen P. Hollingsworth, Kevin W. Bowyer, Fellow, IEEE, and Patrick J. Flynn, Senior Member, IEEE, The Best Bits in an Iris Code, IEEE Trans. on pattern analysis and machine intelligence, 31(6), (2009)
  4. Ma. L., Tan. T, Wang. Y and Zhang. D, Efficient iris recognition by characterizing key local variations, IEEE Trans. Image Process, 13(6),739750 (2004)
  5. Monro D. Rakshit S. and Zhang D., DCT-based iris recognition, IEEE Trans. Pattern Anal. Mach. Intell., 29(4), 586-595 (2007)
  6. Natalia A. Schmid, Member, IEEE, Ketkar Manasi V., Singh Harshinder and Bojan Cukic, Member IEEE, Performance Analysis of Iris-Based Identification System at the Matching Score Level, IEEE Trans. on inf. forensics and security 1(2),(2006)
  7. Daugman J, High confidence visual recognition of persons by a test of statistical independence, IEEE Trans. Pattern Analy. Machine Intell., 15, 11481161 (1993)
  8. Statistical richness of visual phase information: update on recognizing persons by iris patterns, Int. J. Comput. Vis., 45(1), 2538 (2001)
  9. Demodulation by complex-valued wavelets for stochastic pattern recognition, Int. J.Wavelets, Multi-Res. and Info. Processing, 1(1), 117 (2003)
  10. Flom L. and Safir A., Iris Recognition system, U.S. Patent, , 641 394 (1987)
  11. Kumar B., Xie C. and Thornton J., Iris verification using correlation filters, in Proc. 4th Int. Conf. Audio- and Video-Based Biometric Person Authentication, 697705 (2003)
  12. Park C., Lee J., Smith M. and Park K., Iris- based personal authentication using a normalized directional energy feature, in Proc. 4th Int. Conf. Audio- and Video-Based Biometric Person Authentication, 224232, (2003)
  13. Sanchez-Avila C. and Sanchez-Reillo R., Iris-based biometric recognition using dyadic wavelet transform, IEEE Aerosp. Electron. Syst. Mag., 17, 36 (2002)
  14. Tangsukson T. and Havlicek J., AM-FM image segmentation, in Proc. EEE Int. Conf. Image Processing, 104107, (2000)
  15. Tisse C., Martin L., Torres L. and Robert M., Person identification technique using human iris recognition, in Proc. Vision Interface, 294299 (2002)
  16. Boles W. and Boashash B., A human identification technique using images of the iris and wavelet transform, IEEE Trans. Signal Processing, 46, 11851188, (1998)
  17. Havlicek J., Harding D. and Bovik A., The mutli-component AM-FM image representation, IEEE Trans. Image Processing 5, 10941100 (1996)
  18. Yulin Si, Jiangyuan Mei and Huijun Gao, Senior Member, IEEE, Novel Approaches to Improve Robustness, Accuracy and Rapidity of Iris Recognition Systems IEEE Trans. on Ind. Inf., 8(1),(2012)
  19. Paigwar Shikha and Shukla Shailja, Neural Network based Offline Signature Recognition and verification system, Research Journal of Engineering Science, 2(2)11-15 (2013)
  20. Singh Amarendra and Verma Nupur, Ear Recognition for automated Human Identification, Research Journal of Engineering Science, 1(5), 44-46 (2012)
  21. Yadav Sunil Kumar and Rizvi Syed Azhar Abbas, Cybernetics Security Requirements and Reuse for Improving Information Systems Security, Research Journal of Engineering Sci.,1(5), 51-54 (2012)