cs.AI updates on arXiv.org 07月11日 12:04
Mitigating Watermark Stealing Attacks in Generative Models via Multi-Key Watermarking
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本文提出一种水印技术,旨在防止AI生成内容被伪造,通过多密钥扩展和理论保证,有效降低伪造攻击的成功率。

arXiv:2507.07871v1 Announce Type: cross Abstract: Watermarking offers a promising solution for GenAI providers to establish the provenance of their generated content. A watermark is a hidden signal embedded in the generated content, whose presence can later be verified using a secret watermarking key. A threat to GenAI providers are \emph{watermark stealing} attacks, where users forge a watermark into content that was \emph{not} generated by the provider's models without access to the secret key, e.g., to falsely accuse the provider. Stealing attacks collect \emph{harmless} watermarked samples from the provider's model and aim to maximize the expected success rate of generating \emph{harmful} watermarked samples. Our work focuses on mitigating stealing attacks while treating the underlying watermark as a black-box. Our contributions are: (i) Proposing a multi-key extension to mitigate stealing attacks that can be applied post-hoc to any watermarking method across any modality. (ii) We provide theoretical guarantees and demonstrate empirically that our method makes forging substantially less effective across multiple datasets, and (iii) we formally define the threat of watermark forging as the task of generating harmful, watermarked content and model this threat via security games.

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水印技术 AI生成内容 伪造攻击 多密钥扩展 安全游戏
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