CRCVMay 13, 2025

Where the Devil Hides: Deepfake Detectors Can No Longer Be Trusted

arXiv:2505.08255v13 citationsh-index: 5CVPR
Originality Incremental advance
AI Analysis

This exposes a critical vulnerability in Deepfake detection systems, posing a practical threat to accountability and trust in AI security.

The paper tackles the security risk of Deepfake detectors being compromised by poisoned data from third-party providers, showing that malicious triggers can cause abnormal behavior with high effectiveness and stealthiness in experiments.

With the advancement of AI generative techniques, Deepfake faces have become incredibly realistic and nearly indistinguishable to the human eye. To counter this, Deepfake detectors have been developed as reliable tools for assessing face authenticity. These detectors are typically developed on Deep Neural Networks (DNNs) and trained using third-party datasets. However, this protocol raises a new security risk that can seriously undermine the trustfulness of Deepfake detectors: Once the third-party data providers insert poisoned (corrupted) data maliciously, Deepfake detectors trained on these datasets will be injected ``backdoors'' that cause abnormal behavior when presented with samples containing specific triggers. This is a practical concern, as third-party providers may distribute or sell these triggers to malicious users, allowing them to manipulate detector performance and escape accountability. This paper investigates this risk in depth and describes a solution to stealthily infect Deepfake detectors. Specifically, we develop a trigger generator, that can synthesize passcode-controlled, semantic-suppression, adaptive, and invisible trigger patterns, ensuring both the stealthiness and effectiveness of these triggers. Then we discuss two poisoning scenarios, dirty-label poisoning and clean-label poisoning, to accomplish the injection of backdoors. Extensive experiments demonstrate the effectiveness, stealthiness, and practicality of our method compared to several baselines.

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