Concepts de base
Protecting AI-generated content through a unified watermarking framework in diffusion models.
Résumé
The paper introduces WaDiff, a watermark-conditioned diffusion model for copyright protection. It proposes embedding user-specific information into generative outputs to enable detection and owner identification. Extensive experiments demonstrate the effectiveness of WaDiff in both tasks. The method seamlessly integrates watermarking into the generation process, ensuring minimal impact on image quality. Comparison with existing strategies highlights the robustness and efficiency of WaDiff.
Stats
AUC: 0.999
Tracing Accuracy (Trace 104): 97.71%
SSIM: 0.998
FID Difference: +0.41
Citations
"Our task is to embed hidden information into the generated contents, which facilitates further detection and owner identification."
"To enable the traceability of diffusion-generated images, a commonly employed strategy is to embed a unique fingerprint to contents generated by an individual user."
"Our experimental results demonstrate that our efficient watermarking strategy enables accurate detection and identification among a large-scale system with million users."