A Review of the Iris Recognition Methods Used for the Individual Authentication
DOI:
https://doi.org/10.14738/tmlai.86.9687Abstract
The automatic iris recognition has become one of the most important techniques for authenticating the identity of individuals. The analysis of human iris is a reliable tool for the individual authentication due to the iris structure. Iris patterns constitute one of the uniqueness, permanence, and performance biometric traits. Moreover, the iris is considered as not easily tampered biometric traits. Therefore, this paper considers investigating the common automated methods of iris recognition. It surveys the development of utilizing iris images as an authentication means through the explanation of the historical improvement of the processes of the iris analysis. The contribution of this paper is to provide readers with huge information collected and discussed from more than 40 papers of iris recognition studies which have been published in a period of more than 20 years.
References
(1) P. S.Patil, S. R. Kolhe, R. V. Patil, and P. M. Patil, “The Comparison of Iris Recognition using Principal Component Analysis, Log Gabor and Gabor Wavelets,” Int. J. Comput. Appl., vol. 43, no. 1, pp. 29–33, 2012.
(2) A. K. Jain, A. Ross, and S. Prabhakar, “An Introduction to Biometric Recognition,” IEEE Trans. Circuits Syst. Video Technol., vol. 14, no. 1, pp. 4–20, 2004.
(3) J. N. Pato and L. I. Millett, Biometric Recognition: Challenges and Opportunities, vol. 3, no. 2. THE NATIONAL ACADEMIES PRESS, 2010.
(4) H. Rai and A. Yadav, “Iris recognition using combined support vector machine and Hamming distance approach,” Expert Syst. Appl., vol. 41, no. 2, pp. 588–593, 2014.
(5) L. Masek, “Recognition of human iris patterns for biometric identification,” 2003.
(6) A. Paul and D. Loganathan, “A Novel Classifier for Gender Classification from Iris Code used for Recognition,” IJCSN Int. J. Comput. Sci. Netw., vol. 6, no. 35, pp. 325–331, 2017.
(7) S. Umer, B. C. Dhara, and B. Chanda, “Texture code matrix-based multi-instance iris recognition,” Pattern Anal. Appl., vol. 19, no. 1, pp. 283–295, 2016.
(8) R. Luhadiya and P. D. A. K. Prof., “Iris detection for Person Identification using Multiclass SVM,” in International Conference on Advances in Electronics, Communication and Computer Technology (ICAECCT), 2016, pp. 387–392.
(9) M. Ramya, V. Krishnaveni, and K. S. Sridharan, “Certain investigation on iris image recognition using hybrid approach of Fourier transform and Bernstein polynomials,” Pattern Recognit. Lett., vol. 94, pp. 154–162, 2017.
(10) H. Kabir Rana, M. S. Azam, and M. R. Akhtar, “Iris Recognition System Using PCA Based on DWT,” SM J. Biometrics Biostat., vol. 2, no. 3, pp. 1–5, 2017.
(11) R. Luhadiya and A. Khedkar, “Iris Recognition using Fusion of Gray Level Co-occurrence Matrix and Gray Level Run Length Matrix,” Imp. J. Interdiscip. Res., no. 1, pp. 1182–1189, 2017.
(12) C. Li, W. Zhou, and S. Yuan, “Iris recognition based on a novel variation of local binary pattern,” Vis. Comput., vol. 31, no. 10, pp. 1419–1429, 2015.
(13) Y. Chen, Y. Liu, X. Zhu, F. He, H. Wang, and N. Deng, “Efficient iris recognition based on optimal subfeature selection and weighted subregion fusion,” Sci. World J., vol. 2014, no. 2, 2014.
(14) M. I. R, P. B. P, M. K, and S. Ramachandran, “Enhanced Iris Recognition using Discrete Cosine Transform and Radon Transform,” in INTERNATIONAL CONFERENCE ON ELECTRONICS AND COMMUNICATION SYSTEM
(ICECS 2015), 2015, no. ICECS, pp. 2–7.
(15) H. Proença and L. A. Alexandre, “UBIRIS: A noisy iris image database,” Lect. Notes Comput. Sci. (including Subser. Lect. Notes Artif. Intell. Lect. Notes Bioinformatics), vol. 3617 LNCS, pp. 970–977, 2005.
(16) I. Hamouchene and S. Aouat, “A New Texture Analysis Approach for Iris Recognition,” AASRI Procedia, vol. 9, pp. 2–7, 2014.
(17) C. N. Devi, “Automatic Segmentation and Recognition of Iris Images: with Special Reference to Twins.,” in International Conference on Signal Processing, Communications and Networking (ICSCN -2017), 2017, vol. 25, no. 2, pp. 178–17886.
(18) Z. Shi, S. Setlur, and V. Govindaraju, “Digital image enhancement using normalization techniques and their application to palmleaf manuscripts,” State University of New York at Buffal, 2005.
(19) R. Y. Dillak and M. G. Bintiri, “A novel approach for iris recognition,” Proc. - 2016 IEEE Reg. 10 Symp. TENSYMP 2016, pp. 231–236, 2016.
(20) C. Khotimah and D. Juniati, “Iris Recognition Using Feature Extraction of Box Counting Fractal Dimension,” J. Phys. Conf. Ser., vol. 947, no. 1, 2018.
(21) D. M. Monro, S. Rakshit, and D. Zhang, “DCT-bsed iris recognition,” IEEE Trans. Pattern Anal. Mach. Intell., vol. 29, no. 4, pp. 586–595, 2007.
(22) T. W. Ng, T. L. Tay, and S. W. Khor, “Iris recognition using rapid Haar wavelet decomposition,” in 2010 2nd International Conference on Signal Processing Systems (ICSPS), 2010, vol. 1, pp. 820–823.
(23) G. Savithiri and A. A.Murugan, “Performance Analysis on Half Iris Feature Extraction using GW, LBP and HOG,” Int. J. Comput. Appl. (0975 – 8887), vol. 22, no. 2, pp. 27–32, 2011.
(24) M. M and D. K. B. Raja, “A novel approach for iris recognition using DWT & PCA,” Int. J. Adv. Netw. Appl., vol. 5, no. 1, pp. 1830–1836, 2013.
(25) C.-W. Tan and A. Kumar, “Accurate Iris Recognition at a Distance Using Moments Phase Features,” IEEE Trans. Image Process., vol. 23, no. 9, pp. 3962–3974, 2014.
(26) S. Akbar, A. Ahmad, and M. Hayat, “Iris Detection by Discrete Sine Transform Based Feature Vector Using Random Forest,” J. Appl. Environ. Biol. Sci, vol. 4, no. August 2014, pp. 19–23, 2014.
(27) S. S. Dhage, S. S. Hegde, K. Manikantan, and S. Ramachandran, “Dwt-based feature extraction and Radon transform based contrast enhancement for improved iris recognition,” in International Conference on Advances Computing Technologies and Applications (ICACTA-2015), 2015, vol. 45, pp. 256–265.
(28) W. Setiawan and F. Damayanti, “Layers Modification of Convolutional Neural Network for Pneumonia Detection,” J. Phys. Conf. Ser., vol. 1477, no. 5, 2020.
(29) S. S. Salve and S. P. Narote, “Iris recognition using SVM and ANN,” Proc. 2016 IEEE Int. Conf. Wirel. Commun. Signal Process. Networking, WiSPNET 2016, pp. 474–478, 2016.
(30) A. I. Mozumder and S. A. Begum, “An efficient approach towards iris recognition with modular neural network match score fusion,” 2016 IEEE Int. Conf. Comput. Intell. Comput. Res. ICCIC 2016, 2017.
(31) M. Sharkas, “A neural network based approach for iris recognition based on both eyes,” Proc. 2016 SAI Comput. Conf. SAI 2016, pp. 253–258, 2016.
(32) M. R. M. Rizk, H. H. A. Farag, and L. A. A. Said, “Neural Network Classification for Iris Recognition Using Both Particle Swarm Optimization and Gravitational Search Algorithm,” Proc. - 2016 World Symp. Comput. Appl. Res. WSCAR 2016, no. 1, pp. 12–17, 2016.
(33) K. Hajari, U. Gawande, and Y. Golhar, “Neural Network Approach to Iris Recognition in Noisy Environment,” Phys. Procedia, vol. 78, no. December 2015, pp. 675–682, 2016.
(34) M. Arsalan et al., “Deep learning-based iris segmentation for iris recognition in visible light environment,” Symmetry (Basel)., vol. 9, no. 11, 2017.
(35) K. Nguyen, C. Fookes, A. Ross, and S. Sridharan, “Iris Recognition with Off-the-Shelf CNN Features: A Deep Learning Perspective,” IEEE Access, vol. 6, pp. 18848–18855, 2017.
(36) Z. Li, “An Iris Algorithm Based on Coarse and Fine Location,” in 2017 IEEE 2nd International Conference on Big Data Analysis, 2017, pp. 744–747.
(37) T.-Y. Chai, B.-M. Goi, Y. H. Tay, and W.-J. Nyee, “A Trainable Method for Iris Recogniation Using Random Feature Points,” in 2017 Conference on Technologies and Applications of Artificial Intelligence (TAAI), 2017, pp.
–147.
(38) K. Okokpujie, E. Noma-Osaghae, S. John, and A. Ajulibe, “An Improved Iris Segmentation Technique Using Circular Hough Transform,” in IT Convergence and Security 2017, 2018, pp. 203–211.
(39) M. Hamd and S. Ahmed, “A Biometric System for Iris Recognition Based on Fourier Descriptors and Principle Component Analysis,” Iraqi J. Electr. Electron. Eng., vol. 13, no. 2, pp. 180–187, 2017.
(40) S. S. Harakannanavar, K. S. Prabhushetty, C. Hugar, A. Sheravi, M. Badiger, and P. Patil, “IREMD: An Efficient Algorithm for Iris Recognition,” Int. J. Adv. Netw. Appl., vol. 3587, pp. 3580–3587, 2018.
(41) F. He, Y. Liu, X. Zhu, W. Deng, X. Zhang, and G. Huo, “The affection of gabor parameters to iris recognition and their optimization,” Lect. Notes Comput. Sci. (including Subser. Lect. Notes Artif. Intell. Lect. Notes Bioinformatics), vol. 8232 LNCS, pp. 330–337, 2013.
(42) S. Minaee, A. Abdolrashidi, and Y. Wang, “IRIS RECOGNITION USING SCATTERING TRANSFORM AND TEXTURAL FEATURES Shervin Minaee , AmirAli Abdolrashidi and Yao Wang ECE Department , NYU Polytechnic School of Engineering , USA,” in 2015 IEEE Signal Processing and Signal Processing Education Workshop
(SP/SPE), 2015, pp. 37–42.
(43) R. Gnana Praveen, M. Ravi Viswanath, and M. Sriraam Kumaar, “Iris recognition using visible images based on the fusion of Daugman’s approach and Hough transform,” ACM Int. Conf. Proceeding Ser., pp. 50–57, 2018.
(44) P. Samant and R. Agarwal, “Comparative analysis of classification based algorithms for diabetes diagnosis using iris images,” J. Med. Eng. Technol., vol. 42, no. 1, pp. 35–42, 2018.
(45) M. Shaik, “Improved normalization approach for iris image classification using SVM,” Springer Nat. Singapore Pte Ltd, Commun. Comput. Lect. Notes Electr. Eng., vol. 443, pp. 139–145, 2018.