Anti-Forgery: Towards a Stealthy and Robust DeepFake Disruption Attack via Adversarial Perceptual-aware Perturbations
Run Wang, Ziheng Huang, Zhikai Chen, Li Liu, Jing Chen, Lina Wang

TL;DR
This paper introduces a novel perceptual-aware adversarial perturbation method to proactively defend facial images against DeepFake manipulations, demonstrating robustness against common evasion techniques like MagDR.
Contribution
The study proposes a new anti-forgery technique that generates sparse, perceptual-aware perturbations, enhancing robustness over existing adversarial defenses against DeepFake forgery.
Findings
Perturbations are robust to diverse image transformations.
Method effectively counters MagDR image reconstruction attack.
Open-source tool available for future research.
Abstract
DeepFake is becoming a real risk to society and brings potential threats to both individual privacy and political security due to the DeepFaked multimedia are realistic and convincing. However, the popular DeepFake passive detection is an ex-post forensics countermeasure and failed in blocking the disinformation spreading in advance. To address this limitation, researchers study the proactive defense techniques by adding adversarial noises into the source data to disrupt the DeepFake manipulation. However, the existing studies on proactive DeepFake defense via injecting adversarial noises are not robust, which could be easily bypassed by employing simple image reconstruction revealed in a recent study MagDR. In this paper, we investigate the vulnerability of the existing forgery techniques and propose a novel \emph{anti-forgery} technique that helps users protect the shared facial…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Digital Media Forensic Detection · Bacillus and Francisella bacterial research
