AuthGuard: Generalizable Deepfake Detection via Language Guidance
Guangyu Shen, Zhihua Li, Xiang Xu, Tianchen Zhao, Zheng Zhang, Dongsheng An, Zhuowen Tu, Yifan Xing, Qin Zhang

TL;DR
AuthGuard introduces a novel deepfake detection framework that combines vision-language contrastive learning with language guidance, significantly improving generalization to unseen forgeries and enhancing interpretability.
Contribution
It presents a new approach integrating language-guided reasoning with vision-based detection, leveraging large language models and uncertainty learning for better generalization.
Findings
Achieves state-of-the-art accuracy on multiple datasets.
Improves out-of-distribution detection performance.
Enhances deepfake reasoning capabilities.
Abstract
Existing deepfake detection techniques struggle to keep-up with the ever-evolving novel, unseen forgeries methods. This limitation stems from their reliance on statistical artifacts learned during training, which are often tied to specific generation processes that may not be representative of samples from new, unseen deepfake generation methods encountered at test time. We propose that incorporating language guidance can improve deepfake detection generalization by integrating human-like commonsense reasoning -- such as recognizing logical inconsistencies and perceptual anomalies -- alongside statistical cues. To achieve this, we train an expert deepfake vision encoder by combining discriminative classification with image-text contrastive learning, where the text is generated by generalist MLLMs using few-shot prompting. This allows the encoder to extract both language-describable,…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Multimodal Machine Learning Applications · Domain Adaptation and Few-Shot Learning
