Deep Fake
Deepfakes, synthetic media created using AI, pose a significant threat by generating highly realistic yet fabricated content, primarily focusing on audio and video manipulation. Current research emphasizes developing robust detection methods using various approaches, including multimodal frameworks that analyze both visual and auditory cues, and novel architectures like Vision Transformers and Convolutional Neural Networks, often incorporating techniques like self-supervised learning and adversarial training to improve generalization and robustness. The ability to reliably detect deepfakes is crucial for maintaining the integrity of digital media and mitigating the risks of misinformation, fraud, and privacy violations, driving ongoing efforts to improve detection accuracy and address the evolving sophistication of deepfake generation techniques.
Papers
Straight Through Gumbel Softmax Estimator based Bimodal Neural Architecture Search for Audio-Visual Deepfake Detection
Aravinda Reddy PN, Raghavendra Ramachandra, Krothapalli Sreenivasa Rao, Pabitra Mitra, Vinod Rathod
Media Forensics and Deepfake Systematic Survey
Nadeem Jabbar CH, Aqib Saghir, Ayaz Ahmad Meer, Salman Ahmad Sahi, Bilal Hassan, Siddiqui Muhammad Yasir
In Anticipation of Perfect Deepfake: Identity-anchored Artifact-agnostic Detection under Rebalanced Deepfake Detection Protocol
Wei-Han Wang, Chin-Yuan Yeh, Hsi-Wen Chen, De-Nian Yang, Ming-Syan Chen
Visual and audio scene classification for detecting discrepancies in video: a baseline method and experimental protocol
Konstantinos Apostolidis, Jakob Abesser, Luca Cuccovillo, Vasileios Mezaris
Exploring Self-Supervised Vision Transformers for Deepfake Detection: A Comparative Analysis
Huy H. Nguyen, Junichi Yamagishi, Isao Echizen