Multimodal Biometric Fusion Using Evolutionary Techniques
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Abstract
Biometrics refers to the automatic recognition of the person based on his physiological
or behavioral characteristics, such as fingerprint, face, voice, gait …etc. However, Unimodal
biometric system suffers from several limitations, such as non-universality and susceptibility to spoof attacks. To alleviate this problems, information from different biometric sources are combined and such systems are known as multimodal biometric systems. In this thesis, we
propose Particle Swarm Optimization (PSO) and Genetic Algorithm (GA) as two evolutionary
techniques to combine face and voice modalities at the matching scores level. The
effectiveness of these two techniques is compared to those obtained by using a simple BFS, a hybrid intelligent (ANFIS) and a statistical learning (SVM) fusion techniques. The wellknown
Min-Max normalization technique is used to transform the individual matching scores
into a common range before the fusion can take place. The proposed schemes are
experimentally evaluated on publicly available datasets of scores (XM2VTS, TIMIT, NIST
and BANCA) and under three different data quality conditions namely, clean varied and
degraded. In order to reduce the effects of scores variations on the accuracy of biometric
systems, we use Unconstraint Cohort Normalization (UCN) mechanism to normalize the
matching scores before combining them. It is revealed in this study that by deploying such
fusion techniques, the verification error rates (EERs) can be reduced considerably, and
subjecting the scores to UCN process before combining them has resulted in reducing the
verification EERs for the single modalities as well as for multimodal biometric fusion.