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WavRAG: Audio-Integrated Retrieval Augmented Generation for Spoken Dialogue Models

Authors :
Chen, Yifu
Ji, Shengpeng
Wang, Haoxiao
Wang, Ziqing
Chen, Siyu
He, Jinzheng
Xu, Jin
Zhao, Zhou
Publication Year :
2025

Abstract

Retrieval Augmented Generation (RAG) has gained widespread adoption owing to its capacity to empower large language models (LLMs) to integrate external knowledge. However, existing RAG frameworks are primarily designed for text-based LLMs and rely on Automatic Speech Recognition to process speech input, which discards crucial audio information, risks transcription errors, and increases computational overhead. Therefore, we introduce WavRAG, the first retrieval augmented generation framework with native, end-to-end audio support. WavRAG offers two key features: 1) Bypassing ASR, WavRAG directly processes raw audio for both embedding and retrieval. 2) WavRAG integrates audio and text into a unified knowledge representation. Specifically, we propose the WavRetriever to facilitate the retrieval from a text-audio hybrid knowledge base, and further enhance the in-context capabilities of spoken dialogue models through the integration of chain-of-thought reasoning. In comparison to state-of-the-art ASR-Text RAG pipelines, WavRAG achieves comparable retrieval performance while delivering a 10x acceleration. Furthermore, WavRAG's unique text-audio hybrid retrieval capability extends the boundaries of RAG to the audio modality.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.14727
Document Type :
Working Paper