Multimodal Biometric System Fusion Using Fingerprint and Iris with Convolutional Neural Network
Downloads
Biometric sensing technology became everyday life frequent component as a result of world requirement for info security and safety legislation. A strong and efficient individual authentication has appeared because of new developments in multimodal biometrics. Multimodal biometrics integrates different biological traits in trying for creating considerable effect on identification performance. Latent fingerprint biometrics refer to effective human identification system for criminals given the accessible crime evidence shreds. Although, biometric trait restrictions like intra-class variation, sensed data noise, lack of individuality caused low matching score that possesses a negative effect on recognition and investigation process. This paper uses two unimodal biometrics—the fingerprint and the iris—applied as multi-biometrics to show that using these biometrics can produce excellent results with high accuracy. Every biometric result is weighted for involvement in the final decision, and the decision level is utilized for fusion. For every biometric result integration effect, a neural network is used. The datasets' experimental findings have demonstrated a notable biometric system identification capability. The accuracy performance of the suggested approach is 100, the FAR is 0.1, and the EER is 0.1. To demonstrate the efficacy of the suggested system, the suggested method is contrasted with a few other approaches currently in use.
Priyani J, Nanglia P, Singh P, Shokeen V, Sharma A. HGSSA-bi LSTM: A Secure Multimodal Biometric Sensing Using Optimized Bi-Directional Long Short-Term Memory with Self-Attention. ECS Sensors Plus. 2024;3(1):011401.
Shukla PS. Multi-Modal Biometric Authentication System Using Cnn. International Journal of Engineering Research & Technology (IJERT), 2023, 12, 12.
HAFS T, ZEHIR H, HAFS A, BRAHMIA H, NAIT-ALI A. Enhancing Recognition in Multimodal Biometric Systems: Score Normalization and Fusion of Online Signatures and Fingerprints. SCIENCE AND TECHNOLOGY. 2024;27(1):37-49.
Zolfagharipour L, Kadhim MH, Mandeel TH. Enhance the Security of Access to IoT-based Equipment in Fog. In2023 Al-Sadiq International Conference on Communication and Information Technology (AICCIT) 2023 Jul 4 (pp. 142-146). IEEE.
Vekariya V, Joshi M, Dikshit S. Multi-biometric fusion for enhanced human authentication in information security. Measurement: Sensors. 2024 Feb 1;31:100973.
Li S, Fei L, Zhang B, Ning X, Wu L. Hand-based multimodal biometric fusion: A review. Information Fusion. 2024 Apr 12:102418.
Vensila C, Boyed Wesley A. Multimodal biometrics authentication using extreme learning machine with feature reduction by adaptive particle swarm optimization. The Visual Computer. 2024 Mar;40(3):1383-94.
Kadhim ON, Abdulameer MH. Biometric Identification Advances: Unimodal to Multimodal Fusion of Face, Palm, and Iris Features. Advances in Electrical & Computer Engineering. 2024 Jan 1;24(1).
Sasikala TS. A secure multi-modal biometrics using deep ConvGRU neural networks based hashing. Expert Systems with Applications. 2024 Jan 1;235:121096.
Byeon H, Raina V, Sandhu M, Shabaz M, Keshta I, Soni M, Matrouk K, Singh PP, Lakshmi TR. Artificial intelligence-Enabled deep learning model for multimodal biometric fusion. Multimedia Tools and Applications. 2024 Feb 8:1-24.
Kumar KP, Prasad PE, Suresh Y, Babu MR, Kumar MJ. Ensemble recognition model with optimal training for multimodal biometric authentication. Multimedia Tools and Applications. 2024 Mar 8:1-25.
Vallabhadas DK, Sandhya M, Reddy SD, Satwika D, Prashanth GL. Biometric template protection based on a cancelable convolutional neural network over iris and fingerprint. Biomedical Signal Processing and Control. 2024 May 1;91:106006.
Sharma S, Saini A, Chaudhury S. Multimodal biometric user authentication using improved decentralized fuzzy vault scheme based on Blockchain network. Journal of Information Security and Applications. 2024 May 1;82:103740.
Minaee S, Abdolrashidi A, Su H, Bennamoun M, Zhang D. Biometrics recognition using deep learning: A survey. Artificial Intelligence Review. 2023 Aug;56(8):8647-95.
Maio D, Maltoni D, Cappelli R, Wayman JL, Jain AK. FVC2002: Second fingerprint verification competition. In2002 International conference on pattern recognition 2002 Aug 11 (Vol. 3, pp. 811-814). IEEE.
Zhou W, Hu J, Petersen I, Wang S, Bennamoun M. A benchmark 3D fingerprint database. In2014 11th International Conference on Fuzzy Systems and Knowledge Discovery (FSKD) 2014 Aug 19 (pp. 935-940). IEEE.
Dargan S, Kumar M. A comprehensive survey on the biometric recognition systems based on physiological and behavioral modalities. Expert Systems with Applications. 2020 Apr 1;143:113114.
Abdolahi M, Mohamadi M, Jafari M. Multimodal biometric system fusion using fingerprint and iris with fuzzy logic. International Journal of soft computing and engineering. 2013 Jan;2(6):504-10.
Samatha J, Madhavi G. SecureSense: Enhancing Person Verification through Multimodal Biometrics for Robust Authentication. Scalable Computing: Practice and Experience. 2024 Feb 24;25(2):1040-54.
Nazmdeh V, Mortazavi S, Tajeddin D, Nazmdeh H, Asem MM. Iris recognition; from classic to modern approaches. In2019 IEEE 9th Annual Computing and Communication Workshop and Conference (CCWC) 2019 Jan 7 (pp. 0981-0988). IEEE.
Malgheet JR, Manshor NB, Affendey LS, Abdul Halin AB. Iris recognition development techniques: a comprehensive review. Complexity. 2021 Aug 21;2021:1-32.
Singh M, Singh R, Ross A. A comprehensive overview of biometric fusion. Information Fusion. 2019 Dec 1;52:187-205.