defense arXiv Oct 29, 2025 · Oct 2025
Wan Jiang, Jing Yan, Xiaojing Chen et al. · Hefei University of Technology · AnHui University +1 more
Training-free AI-generated image detector exploiting asymmetric reconstruction error shifts induced by structural edits
Output Integrity Attack visiongenerative
Diffusion models have recently achieved remarkable photorealism, making it increasingly difficult to distinguish real images from generated ones, raising significant privacy and security concerns. In response, we present a key finding: structural edits enhance the reconstruction of real images while degrading that of generated images, creating a distinctive edit-induced reconstruction error shift. This asymmetric shift enhances the separability between real and generated images. Building on this insight, we propose EIRES, a training-free method that leverages structural edits to reveal inherent differences between real and generated images. To explain the discriminative power of this shift, we derive the reconstruction error lower bound under edit perturbations. Since EIRES requires no training, thresholding depends solely on the natural separability of the signal, where a larger margin yields more reliable detection. Extensive experiments show that EIRES is effective across diverse generative models and remains robust on the unbiased subset, even under post-processing operations.
diffusion Hefei University of Technology · AnHui University · Xi'an Jiaotong University