Real Time Face Detection and Pin Authentication for ATM Machine

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Pratiksha Dattatray Dolas
Siddhika Santosh Pokharkar
A. A. Khatri
Bhagyashri Rajaram Bhalerao

Abstract

With the increasing incidence of ATM fraud, there is a pressing need for enhanced security measures in automated teller machines (ATMs). This paper presents a dual-factor authentication system that integrates face recognition and Personal Identification Number (PIN) verification to improve ATM transaction security. Utilizing a Convolutional Neural Network (CNN) for real-time face recognition, the proposed system significantly reduces the risk of unauthorized access. The implementation includes an Arduino-based cash dispenser and a web application developed using Tkinter, demonstrating a robust prototype that effectively mitigates ATM fraud.

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How to Cite
Dolas , P. D., Pokharkar , S. S., Khatri , A. A., & Bhalerao, B. R. (2025). Real Time Face Detection and Pin Authentication for ATM Machine. International Journal of Recent Advances in Engineering and Technology, 14(1s), 145–147. Retrieved from https://journals.mriindia.com/index.php/ijraet/article/view/264
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