IMPLEMENTASI HYBRID CNN, FACIAL LANDMARK DAN LIVENESS DETECTION PADA SISTEM ABSENSI WAJAH
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Abstract
This paper presents the implementation of a hybrid approach for face recognition attendance systems, combining Convolutional Neural Network (CNN), facial landmark detection, and liveness detection. The CNN model extracts facial features for identity recognition, while facial landmark detection captures dynamic movements such as eye blinking and mouth motion. Liveness detection ensures system robustness against spoofing attempts including photo and video replay. The system was developed using Python with OpenCV, MediaPipe, and TensorFlow, and tested under multiple spoofing scenarios. Results show a detection accuracy of 95.5%, with real-time performance and resilience against common spoofing threats.
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References
[2] Koshy, R., & Mahmood, A. (2020). Enhanced deep learning architectures for face liveness detection for static and video sequences. Entropy, 22(10), 1186. https://doi.org/10.3390/e22101186
[3] Li, L., Xia, Z., Wu, J., Yang, L., & Han, H. (2022). Face presentation attack detection based on optical flow and texture analysis. Journal of King Saud University – Computer and Information Sciences, 34(4), 1455–1467. https://doi.org/10.1016/j.jksuci.2022.02.019
[4] Meghana, M., Vasavi, M., & Shravani, D. (2021). Facial landmark detection with Mediapipe & creating animated Snapchat filters. International Journal for Innovative Engineering and Management Research, 11, 98–107.
[5] Nemavhola, A., Chibaya, C., & Viriri, S. (2025). A systematic review of CNN architectures, databases, performance metrics, and applications in face recognition. Information, 16(2), 107. https://doi.org/10.3390/info16020107
[6] Pavan, & Thanuja. (2023). Survey on face recognition using CNN. International Journal of Advanced Research in Computer and Communication Engineering (IJARCCE), 12(5), 1791–1795. https://doi.org/10.17148/IJARCCE.2023.125300
[7] Raj, S. B., Tamilselvi, K., & Javith, S. M. (2021). Face identification and liveness detection using CNN for automated attendance system. International Journal of Advance Research, Ideas and Innovations in Technology (IJARIIT), 7(3), 145–148. Retrieved from https://www.ijariit.com
[8] Ray, D. (2025). A face recognition based attendance system with geolocation and real-time action logging. Research Square. https://doi.org/10.21203/rs.3.rs-5931462/v1
[9] Ryando, C., Sigit, R., & Dewantara, B. S. (2025). Face recognition for logging in using deep learning for liveness detection on healthcare kiosks. International Journal on Informatics Visualization (JOIV), 9(1), 123–129. Retrieved from https://www.joiv.org/index.php/joiv