CVAIJul 18, 2025

VLA-Mark: A cross modal watermark for large vision-language alignment model

Tsinghua
arXiv:2507.14067v212 citationsh-index: 21EMNLP
Originality Incremental advance
AI Analysis

This work addresses the need for intellectual property protection in vision-language models, offering a quality-preserving solution that is incremental over existing text watermarking methods.

The paper tackled the problem of watermarking vision-language models without disrupting multimodal coherence, achieving 7.4% lower perplexity, 26.6% higher BLEU scores, and 98.8% AUC for detection compared to conventional methods.

Vision-language models demand watermarking solutions that protect intellectual property without compromising multimodal coherence. Existing text watermarking methods disrupt visual-textual alignment through biased token selection and static strategies, leaving semantic-critical concepts vulnerable. We propose VLA-Mark, a vision-aligned framework that embeds detectable watermarks while preserving semantic fidelity through cross-modal coordination. Our approach integrates multiscale visual-textual alignment metrics, combining localized patch affinity, global semantic coherence, and contextual attention patterns, to guide watermark injection without model retraining. An entropy-sensitive mechanism dynamically balances watermark strength and semantic preservation, prioritizing visual grounding during low-uncertainty generation phases. Experiments show 7.4% lower PPL and 26.6% higher BLEU than conventional methods, with near-perfect detection (98.8% AUC). The framework demonstrates 96.1\% attack resilience against attacks such as paraphrasing and synonym substitution, while maintaining text-visual consistency, establishing new standards for quality-preserving multimodal watermarking

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