Development of a bimodal biometric authentication system for automated teller machine using gray level co-occurrence matrix

Authors

  • Y. Mojeed Ladoke Akintola university of technology

Keywords:

Automated Teller Machines (ATMs), ATM Security, Biometric Authentication, Face Recognition, Iris Recognition

Abstract

The increasing reliance on Automated Teller Machines (ATMs) has highlighted the urgent need for advanced authentication mechanisms to safeguard user transactions against fraud and unauthorized access. However, traditional methods such as Personal Identification Numbers (PINs) and passwords remain vulnerable to attacks, while unimodal biometric systems face challenges of inter-class variance, environmental interference, and non-universality. Specifically, single-modality approaches and conventional ATM cameras fall short in capturing reliable biometric features under varying conditions, while the effectiveness of bimodal approaches in such environments has not been adequately investigated. Therefore, this study developed a bimodal biometric authentication system integrating face and iris recognition with Gray Level Co-Occurrence Matrix (GLCM) for enhanced ATM security. The system leverages GLCM for powerful texture feature extraction from both modalities, capturing intricate spatial relationships that are difficult to spoof. The extracted feature vectors were used to train Support Vector Machines (SVM) with a Radial Basis Function (RBF) kernel as classifiers for both face and iris recognition. The final authentication decision was made using Boolean OR rule fusion. The system achieved a remarkable accuracy of 98.2%, with a False Acceptance Rate (FAR) of 1.8% and a False Rejection Rate (FRR) of 1.2%. These results demonstrably outperformed comparable unimodal systems and existing biometric ATMs, validating the proposed framework as a highly secure and efficient solution for financial authentication systems.

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Published

2026-01-08

How to Cite

Mojeed, Y. (2026). Development of a bimodal biometric authentication system for automated teller machine using gray level co-occurrence matrix. LAUTECH Journal of Engineering and Technology, 19(5), 131–141. Retrieved from https://laujet.com/index.php/laujet/article/view/977

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Section

Articles