Convolutional Neural Network Enhanced Two-Factor Authentication for RFID/IOT-Based Attendance System

Authors

  • Saeed Musa Yarima Department of Electrical and Electronics Engineering, Faculty of Engineering and Engineering Technology, Abubakar Tafawa Balewa University, Bauchi.
  • Alhassan Haruna Umar Department of Computer Engineering Technology, College of Engineering Technology, Jigawa State Polytechnic Dutse.
  • Amiru Ali Department of Computer Science, College of Science and Technology, Jigawa State Polytechnic Dutse
  • Abdullahi Mohammed Ibrahim Department of Computer Science, College of Science and Technology, Jigawa State Polytechnic Dutse

DOI:

https://doi.org/10.64290/bima.v9i2A.1083

Keywords:

Tiny-YOLO CNN, RFID authentication, fingerprint biometrics, attendance monitoring.

Abstract

This paper presents a deep learning-based approach for fingerprint biometrics and RFID authentication, designed for secure attendance systems. The proposed system employs a Tiny-YOLO CNN model to learn and recognize fingerprint patterns, achieving an average accuracy of 95%. Additionally, the system uses the same CNN model to authenticate RFID sequences, demonstrating an average accuracy of 90%. The results highlight the potential of using deep learning-based approaches for biometric authentication, particularly in resource-constrained devices such as the Raspberry Pi. The proposed system demonstrates promising performance and can be further optimized and improved for real-world deployment. This study contributes to the development of secure and efficient attendance systems, with potential applications in various fields, including education, healthcare, and finance.

 

 

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Published

2025-06-30

How to Cite

Musa Yarima, S. ., Haruna Umar, A. ., Ali, A., & Mohammed Ibrahim, A. . (2025). Convolutional Neural Network Enhanced Two-Factor Authentication for RFID/IOT-Based Attendance System. BIMA JOURNAL OF SCIENCE AND TECHNOLOGY GOMBE, 9(2A), 92-101. https://doi.org/10.64290/bima.v9i2A.1083