DOI: 10.58769/joinssr.1935127 ISSN: 2757-6787

Design and Implementation of a Face Recognition-Based Access Control System with Active Liveness Detection

Mert Süleyman Demirsoy, Yusuf Hamida El Naser, Furkan Taha Bademci, İkra Altun, Mustafa Çelik
Face recognition-based access control systems have gained significant attention due to their contactless operation, ease of deployment, and practical applicability in security-sensitive environments. However, the vulnerability of conventional face recognition systems to spoofing attacks, such as printed photographs and replayed videos, remains a major limitation. In this study, a real-time access control system enhanced with blink-based liveness detection is proposed and implemented to improve the security and reliability of biometric authentication. The developed framework integrates face detection, image preprocessing, 128-dimensional facial embedding extraction, Support Vector Machine (SVM)-based identity classification, Eye Aspect Ratio (EAR)-based blink analysis, and Arduino-assisted physical access control within a unified architecture. The system was evaluated using a custom dataset consisting of 300 facial images collected from six users under varying pose and illumination conditions. Experimental results showed that the proposed system achieved an overall face recognition accuracy of 95.7%, while the normal recognition scenario reached a success rate of 98%. The liveness detection module successfully prevented 96% of static photo attacks and 90% of replay-based attacks, demonstrating the effectiveness of blink-based verification as an additional security layer. In terms of computational performance, the system maintained real-time operability with acceptable response times on standard hardware. The findings indicate that the proposed low-cost and modular architecture provides a practical and efficient solution for secure access control applications. Furthermore, the study highlights that combining identity recognition with liveness verification significantly improves the robustness of face-based authentication systems against presentation attacks.

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