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The widespread deployment of CCTV systems has significantly enhanced surveillance and public safety across various environments. However, the emergence of deepfake technology poses serious challenges by enabling malicious manipulation of video footage, compromising the reliability of CCTV systems for evidence collection and privacy protection. Existing deepfake detection solutions often suffer from high computational overhead and are unsuitable for real-time deployment on resource-constrained CCTV cameras. This paper proposes FL-TENB4, a Federated-Learning-enhanced Tiny EfficientNetB4-Lite framework for deepfake detection in CCTV environments. The proposed architecture integrates Tiny Machine Learning (TinyML) techniques with EfficientNetB4-Lite, a lightweight convolutional neural network optimized for edge devices, and employs a Federated Learning (FL) approach for collaborative model updates. The TinyML-based local model ensures real-time deepfake detection with minimal latency, while FL enables privacy-preserving training by aggregating model updates without transferring sensitive video data to centralized servers. The effectiveness of the proposed system is validated using the FaceForensics++ dataset under resource-constrained conditions. Experimental results demonstrate that FL-TENB4 achieves high detection accuracy, reduced model size, and low inference latency, making it highly suitable for real-world CCTV environments.
Ha, J.; Azzaoui, A.E.; Park, J.H.
FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments. Sensors2025, 25, 788.
https://doi.org/10.3390/s25030788
AMA Style
Ha J, Azzaoui AE, Park JH.
FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments. Sensors. 2025; 25(3):788.
https://doi.org/10.3390/s25030788
Chicago/Turabian Style
Ha, Jimin, Abir El Azzaoui, and Jong Hyuk Park.
2025. "FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments" Sensors 25, no. 3: 788.
https://doi.org/10.3390/s25030788
APA Style
Ha, J., Azzaoui, A. E., & Park, J. H.
(2025). FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments. Sensors, 25(3), 788.
https://doi.org/10.3390/s25030788
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Ha, J.; Azzaoui, A.E.; Park, J.H.
FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments. Sensors2025, 25, 788.
https://doi.org/10.3390/s25030788
AMA Style
Ha J, Azzaoui AE, Park JH.
FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments. Sensors. 2025; 25(3):788.
https://doi.org/10.3390/s25030788
Chicago/Turabian Style
Ha, Jimin, Abir El Azzaoui, and Jong Hyuk Park.
2025. "FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments" Sensors 25, no. 3: 788.
https://doi.org/10.3390/s25030788
APA Style
Ha, J., Azzaoui, A. E., & Park, J. H.
(2025). FL-TENB4: A Federated-Learning-Enhanced Tiny EfficientNetB4-Lite Approach for Deepfake Detection in CCTV Environments. Sensors, 25(3), 788.
https://doi.org/10.3390/s25030788
Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.