A Novel Adaptive Two-phase Multimodal Biometric Recognition System

A Novel Adaptive Two-phase Multimodal

Biometric Recognition System

Venkatramaphanikumar Sistla1, Venkata Krishna Kishore Kolli1, and Kamakshi Prasad Valurouthu2

1Department of Computer Science and Engineering, Vignan’s Foundation for Science, Technology and Research, India

2Department of Computer Science and Engineering, Jawaharlal Nehru Technological University Hyderabad College of Engineering, India

Abstract: Multimodal biometric recognition systems are intended to offer authentication without compromising on security, accuracy and these systems also used to address the limitations of unimodal systems like spoofing, intra class variations, noise and non-universality. In this paper, a novel adaptive two-phase multimodal framework is proposed with face, finger and speech traits. In this work, face trait reduces the search space by retrieving few possible nearest enrolled candidates to the probe using Gabor wavelets, semi-supervised kernel discriminant analysis and two dimensional- dynamic time warping. This nonlinear face classification serves as a search space reducer and affects the True Acceptance Rate (TAR). Later, level-1 and level-2 features of fingerprint trait are fused with Dempster Shafer theory and achieved high TAR. In the second phase, to reduce FAR and to validate the user identity, a text dependent speaker verification with RBFNN classifier is proposed. Classification accuracy of the proposed method is evaluated on own and standard datasets and experimental results clearly evident that proposed technique outperforms existing techniques in terms of search time, space and accuracy.

Keywords: Gabor filters, radial basis function, discrete wavelet transform, dynamic time warping kernel discriminant analysis.

Received April 18, 2017; accepted June 13, 2017

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