2(1), (2023):33-37 DOI: https://doi.org/10.46632/jdaai/2/1/6
M. Kokila, G. Amalredge, S. Poornima, M. Geethanjali.
Due to their capacity to overcome a number of significant shortcomings in unimodal biometric approaches, such as noise affectability, populace coverage, intraclass diversity, etc., multimodal biometric methods have been widely adopted by many implementations. Non-universality and spoofing vulnerability Based on the building of a deep learning model for images of a person’s (right & left) irises, a multimodal biometric real-time technique is proposed in this study. The features of transfer learning methods and convolution neural network characteristics have been combined to create this system. Through this research, the back-propagation technique was the training system of choice, with Adam’s optimization approach being employed to change weights and alter learning rates as the learning process progressed. Two publicly available datasets are gathered to evaluate the system’s effectiveness.
SaiyedUmer, Bibhas Chandra Dhara, BhabatoshChanda, “A Novel Cance-lable Iris Recognition System Based on Feature Learning Techniques”, Elsevier Information Sciences, vol. 406-407, pp. 102-118, 2017.
Imran Naseema, AffanAleemb, RobertoTogneric and Mohammed Bennamoun, “Iris recognition using classspecific dictionaries”, Elsevier Computers and Electrical Engineering, vol. 62, pp. 178-193, 2016.
Chiara Galdia, Michele Nappib and Jean-Luc Dugelaya, “Multimodal authentication on smartphones: Combining iris and sensor recognition for a double check of user identity”, Elsevier Pattern Recognition Letters, vol. 82, pp. 144-153, 2016.
HimanshuSrivastava, “A Comparison Based Study on Biometrics for Human Recognition”, IOSR Journal of Computer Engineering, vol. 15, no. 1, 2013.
Rana HK, Azam MS, Akhtar MR, “Iris recognition system using PCA based on DWT”, SM Journal of Biometrics & Biostatistics vol. 2,
Dantcheva, P. Elia, and A. Ross. What else does your biometric data reveal? A survey on soft biometrics. IEEE Transactions on Information Forensics and Security, 11(3):441– 467, 2016.
Daugman. How Iris Recognition Works. In IEEE Transactions on Circuits and Systems for Video Technology2, volume 14, pages 21–30. IEEE, 2004.
Daugman. Information Theory and the IrisCode. IEEE Transactions on Information Forensics and Security, 11(2):400–409, 2016.
S. Doyle, P. J. Flynn, and K. W. Bowyer. Effects of mascara on iris recognition. In I. Kakadiaris, W. J. Scheirer, and L. G. Hassebrook, editors, Proc. SPIE 8712, Biometric and Surveillance Technology for Human and Activity Identification X, volume 8712, page 87120L, may 2013.
Fairhurst, M. Erbilek, and M. D. Costa-Abreu. Exploring gender prediction from iris biometrics. In Biometrics Special Interest Group (BIOSIG), 2015 International Conference of the, pages 1–11, Sept 2015
M. Kokila, G. Amalredge, S. Poornima, M. Geethanjali. “Convolutional Neural Network For Iris Recognition.” REST Journal on Data Analytics and Artificial Intelligence 2(1), (2023):33-37.