CRCVNov 25, 2025

Frequency Bias Matters: Diving into Robust and Generalized Deep Image Forgery Detection

arXiv:2511.19886v12 citations
Originality Incremental advance
AI Analysis

This addresses security concerns in digital forensics by providing a universal method to enhance forgery detector reliability against unknown GANs and noisy samples, though it is incremental as it builds on existing frequency analysis.

The paper tackles the problem of deep image forgery detection by identifying frequency bias as a root cause of generalization and robustness issues, proposing a two-step frequency alignment method that improves detector reliability and serves as an attack, with experiments showing effectiveness across twelve detectors and eight forgery models.

As deep image forgery powered by AI generative models, such as GANs, continues to challenge today's digital world, detecting AI-generated forgeries has become a vital security topic. Generalizability and robustness are two critical concerns of a forgery detector, determining its reliability when facing unknown GANs and noisy samples in an open world. Although many studies focus on improving these two properties, the root causes of these problems have not been fully explored, and it is unclear if there is a connection between them. Moreover, despite recent achievements in addressing these issues from image forensic or anti-forensic aspects, a universal method that can contribute to both sides simultaneously remains practically significant yet unavailable. In this paper, we provide a fundamental explanation of these problems from a frequency perspective. Our analysis reveals that the frequency bias of a DNN forgery detector is a possible cause of generalization and robustness issues. Based on this finding, we propose a two-step frequency alignment method to remove the frequency discrepancy between real and fake images, offering double-sided benefits: it can serve as a strong black-box attack against forgery detectors in the anti-forensic context or, conversely, as a universal defense to improve detector reliability in the forensic context. We also develop corresponding attack and defense implementations and demonstrate their effectiveness, as well as the effect of the frequency alignment method, in various experimental settings involving twelve detectors, eight forgery models, and five metrics.

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