ICLR2026

Safeguarding Multimodal Knowledge Copyright in the RAG-as-a-Service Environment

Tianyu Chen, Jian Lou, Wenjie Wang

1 citation

Abstract

As Retrieval-Augmented Generation (RAG) evolves into service-oriented platforms (RAG-as-a-Service) with shared knowledge bases, protecting the copyright of contributed data becomes essential. Existing watermarking methods in RAG focus solely on textual knowledge, leaving image knowledge unprotected. In this work, we propose AQUA, the first watermark framework for image knowledge protection in Multimodal RAG systems. AQUA embeds semantic signals into synthetic images using two complementary methods: acronym-based triggers and spatial relationship cues. These techniques ensure watermark signals survive indirect watermark propagation from image retriever to textual generator, and are efficient, effective, and imperceptible. Experiments across diverse models and datasets show that AQUA enables robust, stealthy, and reliable copyright tracing, filling a key gap in Multimodal RAG protection. The implementation of AQUA is publicly available at https://github.com/tychenn/AQUA .