Saved in:
Bibliographic Details
Main Authors: Zhou, Yue, He, Xinan, Lin, KaiQing, Fan, Bin, Ding, Feng, Li, Bin
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.00874
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912408440668160
author Zhou, Yue
He, Xinan
Lin, KaiQing
Fan, Bin
Ding, Feng
Li, Bin
author_facet Zhou, Yue
He, Xinan
Lin, KaiQing
Fan, Bin
Ding, Feng
Li, Bin
contents Current AIGC detectors often achieve near-perfect accuracy on images produced by the same generator used for training but struggle to generalize to outputs from unseen generators. We trace this failure in part to latent prior bias: detectors learn shortcuts tied to patterns stemming from the initial noise vector rather than learning robust generative artifacts. To address this, we propose On-Manifold Adversarial Training (OMAT): by optimizing the initial latent noise of diffusion models under fixed conditioning, we generate on-manifold adversarial examples that remain on the generator's output manifold-unlike pixel-space attacks, which introduce off-manifold perturbations that the generator itself cannot reproduce and that can obscure the true discriminative artifacts. To test against state-of-the-art generative models, we introduce GenImage++, a test-only benchmark of outputs from advanced generators (Flux.1, SD3) with extended prompts and diverse styles. We apply our adversarial-training paradigm to ResNet50 and CLIP baselines and evaluate across existing AIGC forensic benchmarks and recent challenge datasets. Extensive experiments show that adversarially trained detectors significantly improve cross-generator performance without any network redesign. Our findings on latent-prior bias offer valuable insights for future dataset construction and detector evaluation, guiding the development of more robust and generalizable AIGC forensic methodologies.
format Preprint
id arxiv_https___arxiv_org_abs_2506_00874
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Breaking Latent Prior Bias in Detectors for Generalizable AIGC Image Detection
Zhou, Yue
He, Xinan
Lin, KaiQing
Fan, Bin
Ding, Feng
Li, Bin
Computer Vision and Pattern Recognition
Current AIGC detectors often achieve near-perfect accuracy on images produced by the same generator used for training but struggle to generalize to outputs from unseen generators. We trace this failure in part to latent prior bias: detectors learn shortcuts tied to patterns stemming from the initial noise vector rather than learning robust generative artifacts. To address this, we propose On-Manifold Adversarial Training (OMAT): by optimizing the initial latent noise of diffusion models under fixed conditioning, we generate on-manifold adversarial examples that remain on the generator's output manifold-unlike pixel-space attacks, which introduce off-manifold perturbations that the generator itself cannot reproduce and that can obscure the true discriminative artifacts. To test against state-of-the-art generative models, we introduce GenImage++, a test-only benchmark of outputs from advanced generators (Flux.1, SD3) with extended prompts and diverse styles. We apply our adversarial-training paradigm to ResNet50 and CLIP baselines and evaluate across existing AIGC forensic benchmarks and recent challenge datasets. Extensive experiments show that adversarially trained detectors significantly improve cross-generator performance without any network redesign. Our findings on latent-prior bias offer valuable insights for future dataset construction and detector evaluation, guiding the development of more robust and generalizable AIGC forensic methodologies.
title Breaking Latent Prior Bias in Detectors for Generalizable AIGC Image Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.00874