SuperMark: Robust and Training-free Image Watermarking via Diffusion-based Super-Resolution
Runyi Hu, Jie Zhang, Yiming Li, Jiwei Li, Qing Guo, Han Qiu, Tianwei, Zhang

TL;DR
SuperMark introduces a training-free, diffusion-based image watermarking framework that embeds watermarks into noise and recovers them using super-resolution models, achieving high robustness and fidelity without extensive training.
Contribution
It proposes a novel, training-free watermarking method leveraging diffusion models and super-resolution techniques, enhancing robustness against distortions and attacks.
Findings
Achieves 99.46% watermark extraction accuracy under standard distortions.
Maintains 89.29% accuracy under adaptive attacks.
Demonstrates strong transferability across datasets and models.
Abstract
In today's digital landscape, the blending of AI-generated and authentic content has underscored the need for copyright protection and content authentication. Watermarking has become a vital tool to address these challenges, safeguarding both generated and real content. Effective watermarking methods must withstand various distortions and attacks. Current deep watermarking techniques often use an encoder-noise layer-decoder architecture and include distortions to enhance robustness. However, they struggle to balance robustness and fidelity and remain vulnerable to adaptive attacks, despite extensive training. To overcome these limitations, we propose SuperMark, a robust, training-free watermarking framework. Inspired by the parallels between watermark embedding/extraction in watermarking and the denoising/noising processes in diffusion models, SuperMark embeds the watermark into initial…
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Taxonomy
MethodsDiffusion
