Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Order within Chaos: Capturing Intrinsic Energy Anomalies for AI-Manipulated Image Forgery Localization

About

Recent advancements in generative AI have led to image editing models capable of producing realistic forgeries that evade traditional image forgery localization methods, as these approaches depend on physical noise absent in synthetic data. To address this challenge, we theoretically demonstrate that the diffusion process inherently suppresses local high-frequency variance, creating a statistical energy gap that is distinguishable from the natural entropy of optical imaging. Guided by this insight, we propose FLAME, a unified framework that utilizes a LAD map to capture these intrinsic anomalies, coupled with a parameter-efficient adapter for SAM to achieve precise, pixel-level forgery localization. Furthermore, to bridge the lag between forensic benchmarks and evolving generative models, we introduce EditStream, an automated pipeline for continuous, instruction-based training data synthesis. Extensive experiments demonstrate that FLAME establishes a new state-of-the-art, significantly outperforming previous methods on AI-generated forgery datasets while effectively generalizing to unseen generative architectures. Our code is available at https://github.com/phoenixnir/FLAME.

Yiming Wang, Baiqi Wu, Qingming Li, Jiahao Chen, Tong Zhang, Shouling Ji• 2026

Related benchmarks

TaskDatasetResultRank
Image Manipulation LocalizationMagicBrush
F1 Score65
21
Image Forgery DetectionCocoGlide
Accuracy75.4
20
Image-level Forgery DetectionMagicBrush
Accuracy90.1
9
Image-level Forgery DetectionSID
Accuracy91.6
9
Image-level Forgery DetectionAutoSplice
Accuracy71.4
9
Image-level Forgery DetectionNanoBanana
Accuracy81.2
9
Image-level Forgery DetectionQwen-Image
Accuracy82.1
9
Image-level Forgery DetectionFlux Kontext
Accuracy79.2
9
Pixel-level image forgery localizationSID ID (evaluation)
mIoU58
9
Pixel-level image forgery localizationCoCoGLIDE (OOD)
IoU48.1
9
Showing 10 of 14 rows

Other info

Follow for update