Interpretable Traffic Responsibility from Dashcam Video via Legal Multi Agent Reasoning
This work addresses the gap between video evidence and legal reasoning for traffic accident analysis, offering an interpretable solution for legal professionals and authorities.
The paper tackles the problem of automatically determining legal responsibility in traffic accidents from dashcam videos, proposing a two-stage framework that outperforms existing methods on new datasets, achieving improved performance in generating responsibility modes and legal reports.
The widespread adoption of dashcams has made video evidence in traffic accidents increasingly abundant, yet transforming "what happened in the video" into "who is responsible under which legal provisions" still relies heavily on human experts. Existing ego-view traffic accident studies mainly focus on perception and semantic understanding, while LLM-based legal methods are mostly built on textual case descriptions and rarely incorporate video evidence, leaving a clear gap between the two. We first propose C-TRAIL, a multimodal legal dataset that, under the Chinese traffic regulation system, explicitly aligns dashcam videos and textual descriptions with a closed set of responsibility modes and their corresponding Chinese traffic statutes. On this basis, we introduce a two-stage framework: (1) a traffic accident understanding module that generates textual video descriptions; and (2) a legal multi-agent framework that outputs responsibility modes, statute sets, and complete judgment reports. Experimental results on C-TRAIL and MM-AU show that our method outperforms general and legal LLMs, as well as existing agent-based approaches, while providing a transparent and interpretable legal reasoning process.