CRAIApr 28, 2025

AGATE: Stealthy Black-box Watermarking for Multimodal Model Copyright Protection

arXiv:2504.21044v12 citationsh-index: 29
Originality Incremental advance
AI Analysis

This work addresses copyright protection for multimodal AI models, offering an incremental improvement in stealthiness and robustness against adversarial attacks.

The authors tackled the problem of model theft in multimodal AI systems by proposing AGATE, a stealthy black-box watermarking framework that outperformed state-of-the-art methods across five datasets in tasks like image-text retrieval and image classification.

Recent advancement in large-scale Artificial Intelligence (AI) models offering multimodal services have become foundational in AI systems, making them prime targets for model theft. Existing methods select Out-of-Distribution (OoD) data as backdoor watermarks and retrain the original model for copyright protection. However, existing methods are susceptible to malicious detection and forgery by adversaries, resulting in watermark evasion. In this work, we propose Model-\underline{ag}nostic Black-box Backdoor W\underline{ate}rmarking Framework (AGATE) to address stealthiness and robustness challenges in multimodal model copyright protection. Specifically, we propose an adversarial trigger generation method to generate stealthy adversarial triggers from ordinary dataset, providing visual fidelity while inducing semantic shifts. To alleviate the issue of anomaly detection among model outputs, we propose a post-transform module to correct the model output by narrowing the distance between adversarial trigger image embedding and text embedding. Subsequently, a two-phase watermark verification is proposed to judge whether the current model infringes by comparing the two results with and without the transform module. Consequently, we consistently outperform state-of-the-art methods across five datasets in the downstream tasks of multimodal image-text retrieval and image classification. Additionally, we validated the robustness of AGATE under two adversarial attack scenarios.

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