Abstract

In order to improve the recognition rate of the biometric identification system, the features of each unimodal biometric are often combined in a certain way. However, there are some mutually exclusive redundant features in those combined features, which will degrade the identification performance. To solve this problem, this paper proposes a novel multimodal biometric identification system for face-iris recognition.It is based on binary particle swarm optimization. The face features are extracted by 2D Log-Gabor and Curvelet transform, while iris features are extracted by Curvelet transform. In order to reduce the complexity of the feature-level fusion, we propose a modified chaotic binary particle swarm optimization (MCBPSO) algorithm to select features. It uses kernel extreme learning machine (KELM) as a fitness function and chaotic binary sequences to initialize particle swarms. After the global optimal position (Gbest) is generated in each iteration, the position of Gbest is varied by using chaotic binary sequences, which is useful to realize chaotic local search and avoid falling into the local optimal position. The experiments are conducted on CASIA multimodal iris and face dataset from Chinese Academy of Sciences.The experimental results demonstrate that the proposed system can not only reduce the number of features to one tenth of its original size, but also improve the recognition rate up to 99.78%. Compared with the unimodal iris and face system, the recognition rate of the proposed system are improved by 11.56% and 2% respectively. The experimental results reveal its performance in the verification mode compared with the existing state-of-the-art systems. The proposed system is satisfactory in addressing face-iris multimodal biometric identification.

Highlights

  • With the progress of the society and the development of science and technology, people pay more and more attention to protect their privacy information

  • The results reveal that our face iris multimodal biometric recognition system achieves the best performance

  • Aiming at the low recognition rate of unimodal biometric, this paper propose a novel face-iris multimodal recognition system with excellent performance and easy implementation

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Summary

Introduction

With the progress of the society and the development of science and technology, people pay more and more attention to protect their privacy information. Biometric recognition technology is a new information security protection measures. Biometric recognition is a process that uses some inherent and unique physiological or behavioral characteristics of human beings to collect and judge the information and determine the identity [1]. Unimodal biometric recognition is a kind of human physiological or behavioral characteristic identifying method which is based on single biological features

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