Deepfake Detection
Deepfake detection research aims to develop robust methods for identifying manipulated media, combating the spread of misinformation and fraudulent content. Current efforts focus on improving the generalization of detection models across diverse deepfake generation techniques, employing architectures like Vision Transformers (ViTs) and Convolutional Neural Networks (CNNs), often incorporating multimodal analysis (audio-visual) and leveraging pre-trained models like CLIP. This field is crucial for maintaining digital media integrity and security, with implications for law enforcement, cybersecurity, and the broader fight against disinformation.
Papers
Diff-ID: An Explainable Identity Difference Quantification Framework for DeepFake Detection
Chuer Yu, Xuhong Zhang, Yuxuan Duan, Senbo Yan, Zonghui Wang, Yang Xiang, Shouling Ji, Wenzhi Chen
Impact of Video Processing Operations in Deepfake Detection
Yuhang Lu, Touradj Ebrahimi
LatentForensics: Towards frugal deepfake detection in the StyleGAN latent space
Matthieu Delmas, Amine Kacete, Stephane Paquelet, Simon Leglaive, Renaud Seguier
Level Up the Deepfake Detection: a Method to Effectively Discriminate Images Generated by GAN Architectures and Diffusion Models
Luca Guarnera, Oliver Giudice, Sebastiano Battiato
Feature Extraction Matters More: Universal Deepfake Disruption through Attacking Ensemble Feature Extractors
Long Tang, Dengpan Ye, Zhenhao Lu, Yunming Zhang, Shengshan Hu, Yue Xu, Chuanxi Chen