Vulnerabilities in AI-generated Image Detection: The Challenge of Adversarial Attacks
Yunfeng Diao, Naixin Zhai, Changtao Miao, Zitong Yu, Xingxing Wei, Xun Yang, Meng Wang

TL;DR
This paper reveals the vulnerability of AI-generated image detectors to adversarial attacks, proposing a novel frequency-based Bayesian attack method that effectively deceives various detectors in different scenarios.
Contribution
It introduces FPBA, a new attack method leveraging frequency domain perturbations and Bayesian surrogate models to systematically compromise AIGI detectors.
Findings
FPBA successfully attacks multiple AIGI detectors in black-box settings.
Adversarial examples transfer across different models and generators.
The method remains effective against compressed images and cross-generator scenarios.
Abstract
Recent advancements in image synthesis, particularly with the advent of GAN and Diffusion models, have amplified public concerns regarding the dissemination of disinformation. To address such concerns, numerous AI-generated Image (AIGI) Detectors have been proposed and achieved promising performance in identifying fake images. However, there still lacks a systematic understanding of the adversarial robustness of AIGI detectors. In this paper, we examine the vulnerability of state-of-the-art AIGI detectors against adversarial attack under white-box and black-box settings, which has been rarely investigated so far. To this end, we propose a new method to attack AIGI detectors. First, inspired by the obvious difference between real images and fake images in the frequency domain, we add perturbations under the frequency domain to push the image away from its original frequency distribution.…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning
MethodsDiffusion
