Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

MarkSweep: A No-box Removal Attack on AI-Generated Image Watermarking via Noise Intensification and Frequency-aware Denoising

About

AI watermarking embeds invisible signals within images to provide provenance information and identify content as AI-generated. In this paper, we introduce MarkSweep, a novel watermark removal attack that effectively erases the embedded watermarks from AI-generated images without degrading visual quality. MarkSweep first amplifies watermark noise in high-frequency regions via edge-aware Gaussian perturbations and injects it into clean images for training a denoising network. This network then integrates two modules, the learnable frequency decomposition module and the frequency-aware fusion module, to suppress amplified noise and eliminate watermark traces. Theoretical analysis and extensive experiments demonstrate that invisible watermarks are highly vulnerable to MarkSweep, which effectively removes embedded watermarks, reducing the bit accuracy of HiDDeN and Stable Signature watermarking schemes to below 67%, while preserving perceptual quality of AI-generated images.

Jie Cao, Zelin Zhang, Qi Li, Jianbing Ni• 2026

Related benchmarks

TaskDatasetResultRank
Watermark Removal AttackSS in-processing watermarking scheme
Bit Accuracy66.83
13
Watermark Removal AttackSS Watermarking Scheme
PSNR30.89
9
Watermark Removal AttackPTW Watermarking Scheme
PSNR31.54
9
Watermark Removal AttackYu Watermarking Scheme
PSNR29.75
9
Watermark Removal AttackHiDDeN Watermarking Scheme
PSNR28.93
9
Watermark RemovalPTW Watermarking Scheme
Bit Accuracy72.19
8
Watermark RemovalYu Watermarking Scheme
BA0.5924
8
Watermark RemovalHiDDeN Watermarking Scheme
Bit Accuracy51.32
8
Showing 8 of 8 rows

Other info

Follow for update