ArXiv TLDR

Secure Seed-Based Multi-bit Watermarking for Diffusion Models from First Principles

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2605.06153

Enoal Gesny, Eva Giboulot

cs.CRcs.CV

TLDR

This paper introduces a theoretical framework and a new method (SSB) for secure, robust, and model-independent watermarking of diffusion models.

Key contributions

  • Establishes a formal evaluation framework for watermarking based on security, robustness, and fidelity.
  • Decouples the generative model from the watermarking decision mechanism for theoretical analysis.
  • Introduces SSB, a novel seed-based multi-bit watermarking method for diffusion models.
  • SSB provides theoretical guarantees and flexible trade-offs across security, robustness, and fidelity.

Why it matters

This paper addresses the limitations of current empirical watermarking evaluations by providing a rigorous theoretical framework. It enables the design of watermarking systems with strong guarantees, reducing the need for costly, model-dependent empirical testing.

Original Abstract

The rapid emergence of generative image models has led to the development of specialized watermarking techniques, particularly in-generation methods such as seed-based embedding. However, current evaluations in this area remain largely empirical, making them heavily reliant on the specific model architectures used for generation and inversion. This prevents any clear conclusion on the performance of any method, especially regarding security, for which a rigorous definition is lacking. Against this approach, we argue that the effectiveness of a watermarking scheme should be established purely through a thorough theoretical analysis. This is enabled by decoupling the model-dependent part from the actual decision mechanism of the watermarking system. Using this decoupling, we introduce a formal evaluation framework based on security, robustness, and fidelity. This allows precise comparisons between watermarking systems through a characteristic surface representing the trade-off between these three quantities, independent of any generative model. Based on this framework, we propose SSB, a novel watermarking method that generalizes previous seed-based methods by allowing to reach any security-robustness-fidelity regime on its characteristic surface. This work opens the door to the design of modern watermarking systems with theoretical guarantees that do not necessitate any costly empirical evaluations.

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