HMARK: Radioactive Multi-Bit Semantic-Latent Watermarking for Diffusion Models
- URL: http://arxiv.org/abs/2512.00094v1
- Date: Wed, 26 Nov 2025 16:14:47 GMT
- Title: HMARK: Radioactive Multi-Bit Semantic-Latent Watermarking for Diffusion Models
- Authors: Kexin Li, Guozhen Ding, Ilya Grishchenko, David Lie,
- Abstract summary: HMARK is a novel multi-bit watermarking scheme for image diffusion models.<n>It encodes ownership information as secret bits in the semantic-latent space (h-space) for image diffusion models.<n>It achieves 98.57% watermark detection accuracy, 95.07% bit-level recovery accuracy, 100% recall rate, and 1.0 AUC on images produced by the downstream adversarial model.
- Score: 10.694242861654063
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modern generative diffusion models rely on vast training datasets, often including images with uncertain ownership or usage rights. Radioactive watermarks -- marks that transfer to a model's outputs -- can help detect when such unauthorized data has been used for training. Moreover, aside from being radioactive, an effective watermark for protecting images from unauthorized training also needs to meet other existing requirements, such as imperceptibility, robustness, and multi-bit capacity. To overcome these challenges, we propose HMARK, a novel multi-bit watermarking scheme, which encodes ownership information as secret bits in the semantic-latent space (h-space) for image diffusion models. By leveraging the interpretability and semantic significance of h-space, ensuring that watermark signals correspond to meaningful semantic attributes, the watermarks embedded by HMARK exhibit radioactivity, robustness to distortions, and minimal impact on perceptual quality. Experimental results demonstrate that HMARK achieves 98.57% watermark detection accuracy, 95.07% bit-level recovery accuracy, 100% recall rate, and 1.0 AUC on images produced by the downstream adversarial model finetuned with LoRA on watermarked data across various types of distortions.
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