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GaussMarker: Robust Dual-Domain Watermark for Diffusion Models

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As Diffusion Models (DM) generate increasingly realistic images, related issues such as copyright and misuse have become a growing concern. Watermarking is one of the promising solutions. Existing methods inject the watermark into the single-domain of initial Gaussian noise for generation, which suffers from unsatisfactory robustness. This paper presents the first dual-domain DM watermarking approach using a pipelined injector to consistently embed watermarks in both the spatial and frequency domains. To further boost robustness against certain image manipulations and advanced attacks, we introduce a model-independent learnable Gaussian Noise Restorer (GNR) to refine Gaussian noise extracted from manipulated images and enhance detection robustness by integrating the detection scores of both watermarks. GaussMarker efficiently achieves state-of-the-art performance under eight image distortions and four advanced attacks across three versions of Stable Diffusion with better recall and lower false positive rates, as preferred in real applications.

Kecen Li, Zhicong Huang, Xinwen Hou, Cheng Hong• 2025

Related benchmarks

TaskDatasetResultRank
Image GenerationStable Diffusion (SD) 1.4
CLIP Score0.3115
18
Watermark RobustnessGustavosta Stable-Diffusion-Prompts (test)
Average Robustness97.87
15
Watermark AttackStable-Diffusion-Prompts
Clean Scenario Performance0.00e+0
9
Image GenerationStable Diffusion 2.0
FID19.32
6
Image GenerationStable Diffusion 2.1
FID21.13
6
Image GenerationStable Diffusion Average
FID20.16
6
Watermark Removal Attack RobustnessWAVES
Average58.01
5
Watermarking5,000 images (batch)
Watermark Injection Time (ms)2.02e+3
5
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