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Main Authors: Zhang, Jiangling, Gao, Shuxuan, Liu, Bofan, Feng, Siqiang, Huang, Jirui, Chen, Yaxiong, Chen, Ziyu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.18842
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author Zhang, Jiangling
Gao, Shuxuan
Liu, Bofan
Feng, Siqiang
Huang, Jirui
Chen, Yaxiong
Chen, Ziyu
author_facet Zhang, Jiangling
Gao, Shuxuan
Liu, Bofan
Feng, Siqiang
Huang, Jirui
Chen, Yaxiong
Chen, Ziyu
contents The proliferation of highly realistic AI-generated images poses critical challenges for digital forensics, demanding precise pixel-level localization of manipulated regions. Existing methods predominantly learn discriminative patterns of specific forgeries and often struggle with novel manipulations as editing techniques continue to evolve. We propose the Iterative Forgery Amplifier Network (IFA-Net), which shifts from learning "what is fake" to modeling "what is real". Grounded in the principle that all manipulations deviate from the natural image manifold, IFA-Net leverages a frozen Masked Autoencoder (MAE) pretrained on real images as a universal realness prior. Our framework operates through a two-stage closed-loop process: an initial Dual-Stream Segmentation Network (DSSN) fuses the original image with MAE reconstruction residuals for coarse localization, followed by a Task-Adaptive Prior Injection (TAPI) module that converts this coarse prediction into guiding prompts to steer the MAE decoder and amplify reconstruction failures in suspicious regions for precise refinement. Extensive experiments on four diffusion-based inpainting benchmarks show that IFA-Net achieves an average improvement of 6.5% in IoU and 8.1% in F1-score over the second-best method, while demonstrating strong generalization to traditional manipulation types.
format Preprint
id arxiv_https___arxiv_org_abs_2602_18842
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Detecting AI-Generated Forgeries via Iterative Manifold Deviation Amplification
Zhang, Jiangling
Gao, Shuxuan
Liu, Bofan
Feng, Siqiang
Huang, Jirui
Chen, Yaxiong
Chen, Ziyu
Computer Vision and Pattern Recognition
The proliferation of highly realistic AI-generated images poses critical challenges for digital forensics, demanding precise pixel-level localization of manipulated regions. Existing methods predominantly learn discriminative patterns of specific forgeries and often struggle with novel manipulations as editing techniques continue to evolve. We propose the Iterative Forgery Amplifier Network (IFA-Net), which shifts from learning "what is fake" to modeling "what is real". Grounded in the principle that all manipulations deviate from the natural image manifold, IFA-Net leverages a frozen Masked Autoencoder (MAE) pretrained on real images as a universal realness prior. Our framework operates through a two-stage closed-loop process: an initial Dual-Stream Segmentation Network (DSSN) fuses the original image with MAE reconstruction residuals for coarse localization, followed by a Task-Adaptive Prior Injection (TAPI) module that converts this coarse prediction into guiding prompts to steer the MAE decoder and amplify reconstruction failures in suspicious regions for precise refinement. Extensive experiments on four diffusion-based inpainting benchmarks show that IFA-Net achieves an average improvement of 6.5% in IoU and 8.1% in F1-score over the second-best method, while demonstrating strong generalization to traditional manipulation types.
title Detecting AI-Generated Forgeries via Iterative Manifold Deviation Amplification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.18842