AN ENHANCED MULTI-MODAL BIOMETRIC AUTHENTICATION

Main Article Content

GAVVA PRASHANTH
DR.ANTO.A.MICHEAL
GAURAGALA PRASHANTHI
KESAVA ROHIT GIRIVARDHAN REDDY

Abstract

A multi-modal biometrics (MMB) system incorporates information as of more than one biometric modality for enhancing each biometric system’s performance. The recognition system encompasses robustness, accuracy, along with recognition rate issues. The model deals with biometric authentication and its implementation in a 3- tier multimodal architecture which works on the basic principle of identification and authentication. As the applications of computers are increasing in every sector, the requirement of a dependable authentication plan to affirm the character of an individual is immense. The proposed MMB system is on FLSL fusion method and Modified Deep Learning Neural Network (MDLNN) to enhance the performance. The face, ear, retina, fingerprint, and front hand image traits are considered. This comprises image enhancement, segmentation, feature extraction, feature reduction, rule generation, and identification phases. The Viola-Jones Algorithm (VJA) segments the facial parts, and the Penalty and Pearson Correlation-based Watershed Segmentation (PPWS) algorithm eliminates the unwanted information in the ear, finger traits and also the blood vessel of the retina image. The features are extracted as of images, and are inputted to the MDLNN to classify the person as genuine or imposter.

Downloads

Download data is not yet available.

Metrics

Metrics Loading ...

Article Details

How to Cite
PRASHANTH, G., DR.ANTO.A.MICHEAL, GAURAGALA PRASHANTHI, and KESAVA ROHIT GIRIVARDHAN REDDY. “AN ENHANCED MULTI-MODAL BIOMETRIC AUTHENTICATION”. Technix International Journal for Engineering Research, vol. 9, no. 6, June 2022, pp. 151-8, https://tijer.org/index.php/tijer/article/view/223.
Section
Research Articles

References

. S.A. Saleh, S. Azam, K.C. Yeo, B. Shanmugam and K. Kamarhati, "An improved face recognition method

using Local Binary Pattern method", IEEE International Conference on Intelligent Systems and Control (ISCO),

R. Par Kavi, K.R. Chaldees and J. Ajeet, “Multimodal Biometrics for user authentication”. 11th International

Conference on Intelligent Systems and Control (ISCO), 2017.

R. Singh, J. Gottwald and S.S. Yadav, "Multimodal Biometric Authentication System: Challenges and

Solutions", Global Journal of Computer Science and Technology, vol. 11 Issue 16, 2011.

C.S. Kong, T. Yang and C. Tseng, "User Authentication Scheme Using Physiological and Behavioral

Biometrics for Multitouch Devices", The Scientific World Journal, vol. 2014.

A.K. Jain, A. Ross and S. Prabhakar, "An introduction to biometric recognition", IEEE Transactions on

circuits and systems for video technology, 14(1), 2004, pp.4-20.

Y. Cai, H. Jiang, D. Chen and M.C. Huang, "Online Learning Classifier based Behavioral Biometric

Authentication", 2018 IEEE 15th International Conference on Wearable & Implantable Body Sensor Networks,

S. Ghosh, A. Majumder, J. Goswami, A. Kumar, S.P. Mohanty and B.K. Bhattacharyya, "Swing-pay: One

card meets all user payment and identity needs: A digital card module using NFC and biometric authentication

for peer-to-peer payment", IEEE Consumer Electronics Magazine, 6(1), 2017, pp.82-93.

A. Ross and A.K. Jain, "Multimodal Biometrics: An overview", In Signal Processing Conference, 12th

European (pp. 1221-1224). IEEE, 2004.

K. Dela and M. Grgich, "A survey of biometric recognition methods", In 46th International Symposium

Electronics in Marine, vol. 46, 2004, pp. 16-18.

A.K. Jain, L. Hong, S. Pandani and R. Bole, "An identity-authentication system using fingerprints",

Proceedings of the IEEE, 85(9), 1997, pp.1365-1388.

M. Madhavaram and R. Ravi, "Fingerprint-Sclera based Multimodal Biometric Authentication System using

Hybrid Genetic Intelligent Technique for System on Chip Application", Toga Journal, vol.14, 2018.

N. Bansal, "Enhanced Ras Key Generation Modeling Using Fingerprint Biometric" (Doctoral dissertation,

NIT, Jamshedpur), 2018.

O. Dogbane and D.J. Kim, "Comparing fingerprint-based biometrics authentication versus traditional

authentication methods for e-payment", Decision Support Systems, 106, 2018, pp.1-14.

J. Peng, A.A.A. El-Latif, Q. Li and X. Neu, "Multimodal biometric authentication based on score level fusion

of finger biometrics", Opti International Journal for Light and Electron Optics, 125(23), 2014, pp.6891-6897.

R. Sellick, U. Ulua, A. Mink, M. Indiana and A. Jain, "Large-scale evaluation of multimodal biometric

authentication using state-of-the-art systems", IEEE transactions on pattern analysis and machine intelligence,

(3),2005, pp.450-455.