Journal of Engineering and Applied Sciences
Year:
2019
Volume:
14
Issue:
1
Page No.
224 - 232
References
Barra, S., A. Casanova, F. Narducci and S. Ricciardi, 2015. Ubiquitous iris recognition by means of mobile devices. Pattern Recognit. Lett., 57: 66-73.
CrossRef | Direct Link | De Marsico, M., M. Nappi, D. Riccio and H. Wechsler, 2015. Mobile Iris Challenge Evaluation (MICHE)-I, biometric iris dataset and protocols. Pattern Recognit. Lett., 57: 17-23.
CrossRef | Direct Link | Galdi, C. and J.L. Dugelay, 2017. FIRE: Fast iris recognition on mobile phones by combining colour and texture features. Pattern Recognit. Lett., 91: 44-51.
CrossRef | Direct Link | Jillela, R.R. and A. Ross, 2015. Segmenting iris images in the visible spectrum with applications in mobile biometrics. Pattern Recognit. Lett., 57: 4-16.
CrossRef | Direct Link | Kim, D., Y. Jung, K.A. Toh, B. Son and J. Kim, 2016. An empirical study on iris recognition in a mobile phone. Exp. Syst. Appl., 54: 328-339.
CrossRef | Direct Link | Mitra, S. and M. Gofman, 2016. Biometrics in a Data Driven World: Trends, Technologies and Challenges. CRC Press, Boca Raton, Florida, USA., ISBN:9781315317069, Pages: 402.
Prabhakar, S., S. Pankanti and A.K. Jain, 2003. Biometric recognition: Security and privacy concerns. IEEE Secur. Priv., 1: 33-42.
CrossRef | Direct Link | Raja, K.B., R. Raghavendra, S. Venkatesh and C. Busch, 2017. Multi-patch deep sparse histograms for iris recognition in visible spectrum using collaborative subspace for robust verification. Pattern Recognit. Lett., 91: 27-36.
CrossRef | Direct Link | Raja, K.B., R. Raghavendra, V.K. Vemuri and C. Busch, 2015. Smartphone based visible iris recognition using deep sparse filtering. Pattern Recognit. Lett., 57: 33-42.
CrossRef | Direct Link | Thavalengal, S., 2016. Contributions to practical iris biometrics on smartphones. Ph.D Thesis, College of Engineering and Informatics, National University of Ireland, Galway, Ireland.