Probability-Possibility Theories Based Iris Biometric Recognition System

Authors

  • Bellaaj Majd I was born in Ariana Almadina, Tunisia on 14 January 1984. He received the B.S. degree in Mathematics from 9 april School, Sfax, Tunisia in 2002, received the M.I. degree in computer from Sfax faculty of sciences, Sfax University, Tunisia in 2007 ,received the M.Res. degree in Communicating Intelligent System from Sousse National Engineering School, Sousse University, Tunisia in 2010 and received the Ph.D. degree in Engineering Computer System from Sfax National Engineering School, Sfax University, Tunisia in 2016. He is now a member of Control and Energy Management Laboratory. His research focuses on image processing, biometric recognition via fingerprint, iris and palmprint, information theory, security information and watermarking ancient documents.

Abstract

The performance and robustness of the iris-based recognition systems still suffer from imperfection in the biometric information. This paper makes an attempt to address these imperfections and deals with important problem for real system. We proposed a new method for iris recognition system based on uncertainty theories to treat imperfection iris feature. Several factors cause different types of degradation in iris data such as the poor quality of the acquired pictures, the partial occlusion of the iris region due to light spots, or lenses, eyeglasses, hair or eyelids, and adverse illumination and/or contrast. All of these factors are open problems in the field of iris recognition and affect the performance of iris segmentation, its feature extraction or decision making process, and appear as imperfections in the extracted iris feature. The aim of our experiments is to model the variability and ambiguity in the iris data with the uncertainty theories. This paper illustrates the importance of the use of this theory for modeling or/and treating encountered imperfections. Several comparative experiments are conducted on two subsets of the CASIA-V4 iris image database namely Interval and Synthetic. Compared to a typical iris recognition system relying on the uncertainty theories, experimental results show that our proposed model improves the iris recognition system in terms of Equal Error Rates (EER), Area Under the receiver operating characteristics Curve (AUC) and Accuracy Recognition Rate (ARR) statistics.

Keywords

Biometrics, Biometric Technologies, Pattern Recognition

Author Biography

Bellaaj Majd, I was born in Ariana Almadina, Tunisia on 14 January 1984. He received the B.S. degree in Mathematics from 9 april School, Sfax, Tunisia in 2002, received the M.I. degree in computer from Sfax faculty of sciences, Sfax University, Tunisia in 2007 ,received the M.Res. degree in Communicating Intelligent System from Sousse National Engineering School, Sousse University, Tunisia in 2010 and received the Ph.D. degree in Engineering Computer System from Sfax National Engineering School, Sfax University, Tunisia in 2016. He is now a member of Control and Energy Management Laboratory. His research focuses on image processing, biometric recognition via fingerprint, iris and palmprint, information theory, security information and watermarking ancient documents.

Sfax National Engineering School, Sfax University, member of Control and Energy Management  Laboratory.

Published

2019-07-02

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