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Advanced Multimodal Fusion for Biometric Recognition System Based on Performance Comparison of SVM and ANN Techniques


Affiliations
1 ATMS Research Unit, National School of Engineering, Sfax, 3038, Tunisia
 

In a multi modal biometric system, an efficient fusion method is necessary for combining information from various single modality systems. The score level fusion is used to combine several biometric features derived from different biometric modalities. Three biometric characteristics are considered in this study: Face, finger print and Voice. Classification methods represent also the basis of important recognition accuracy improvements. The artificial neural networks (ANN) and support vector machines (SVM) are considered as an excellent technique for classification.This paper presents a comparison of multi modal biometric recognition performances based on some methods that have been successfully applied using the fusion of scores. After exploring each modality (face, fingerprint and voice), were covered three similarity scores. These scores are then introduced into two different classifiers: ANN and SVM. Experimental results demonstrate that a multimodal biometric system provides better performances than those using just one modalities system. Comparison of support vector machine and ANN based on score-level fusion methods is obtained and demonstrates that an average recognition rate(ARR=57.69%) is obtained using ANN.While fusion based on SVM gives an ARR=63.31%.

Keywords

Multimodal Biometric System, Voice, Fingerprint, Face, Recognition, Score-Level, Fusion, ANN, SVM.
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  • Advanced Multimodal Fusion for Biometric Recognition System Based on Performance Comparison of SVM and ANN Techniques

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Authors

Mofdi Dhouib
ATMS Research Unit, National School of Engineering, Sfax, 3038, Tunisia
Sabeur Masmoudi
ATMS Research Unit, National School of Engineering, Sfax, 3038, Tunisia
Ahmed Ben Hamida
ATMS Research Unit, National School of Engineering, Sfax, 3038, Tunisia

Abstract


In a multi modal biometric system, an efficient fusion method is necessary for combining information from various single modality systems. The score level fusion is used to combine several biometric features derived from different biometric modalities. Three biometric characteristics are considered in this study: Face, finger print and Voice. Classification methods represent also the basis of important recognition accuracy improvements. The artificial neural networks (ANN) and support vector machines (SVM) are considered as an excellent technique for classification.This paper presents a comparison of multi modal biometric recognition performances based on some methods that have been successfully applied using the fusion of scores. After exploring each modality (face, fingerprint and voice), were covered three similarity scores. These scores are then introduced into two different classifiers: ANN and SVM. Experimental results demonstrate that a multimodal biometric system provides better performances than those using just one modalities system. Comparison of support vector machine and ANN based on score-level fusion methods is obtained and demonstrates that an average recognition rate(ARR=57.69%) is obtained using ANN.While fusion based on SVM gives an ARR=63.31%.

Keywords


Multimodal Biometric System, Voice, Fingerprint, Face, Recognition, Score-Level, Fusion, ANN, SVM.