defense arXiv Dec 19, 2025 · Dec 2025
Chenming Zhou, Jiaan Wang, Yu Li et al. · Chinese Academy of Sciences · University of Chinese Academy of Sciences
Pixel-level mapping pre-processing disrupts semantic bias in AI-generated image detectors, boosting cross-generator generalization on unseen GANs and diffusion models
Output Integrity Attack vision
The rapid evolution of generative technologies necessitates reliable methods for detecting AI-generated images. A critical limitation of current detectors is their failure to generalize to images from unseen generative models, as they often overfit to source-specific semantic cues rather than learning universal generative artifacts. To overcome this, we introduce a simple yet remarkably effective pixel-level mapping pre-processing step to disrupt the pixel value distribution of images and break the fragile, non-essential semantic patterns that detectors commonly exploit as shortcuts. This forces the detector to focus on more fundamental and generalizable high-frequency traces inherent to the image generation process. Through comprehensive experiments on GAN and diffusion-based generators, we show that our approach significantly boosts the cross-generator performance of state-of-the-art detectors. Extensive analysis further verifies our hypothesis that the disruption of semantic cues is the key to generalization.
cnn gan diffusion Chinese Academy of Sciences · University of Chinese Academy of Sciences