TrafficRAG is a multimodal RAG framework that turns accident videos into structured text queries, retrieves legal rules and cases via BM25 plus dense retrieval, and generates liability reports, reporting 77.32% legal norm accuracy and 5.48% liability ratio MAE.
arXiv preprint arXiv:2512.11350 (2025)
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TrafficRAG: A Multimodal RAG Framework for Traffic Accident Liability Determination
TrafficRAG is a multimodal RAG framework that turns accident videos into structured text queries, retrieves legal rules and cases via BM25 plus dense retrieval, and generates liability reports, reporting 77.32% legal norm accuracy and 5.48% liability ratio MAE.