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Domain-Enhanced Dual-Branch Model for Efficient and Interpretable Accident Anticipation

Domain-Enhanced Dual-Branch Model for Efficient and Interpretable Accident Anticipation

来源:Arxiv_logoArxiv
英文摘要

Developing precise and computationally efficient traffic accident anticipation system is crucial for contemporary autonomous driving technologies, enabling timely intervention and loss prevention. In this paper, we propose an accident anticipation framework employing a dual-branch architecture that effectively integrates visual information from dashcam videos with structured textual data derived from accident reports. Furthermore, we introduce a feature aggregation method that facilitates seamless integration of multimodal inputs through large models (GPT-4o, Long-CLIP), complemented by targeted prompt engineering strategies to produce actionable feedback and standardized accident archives. Comprehensive evaluations conducted on benchmark datasets (DAD, CCD, and A3D) validate the superior predictive accuracy, enhanced responsiveness, reduced computational overhead, and improved interpretability of our approach, thus establishing a new benchmark for state-of-the-art performance in traffic accident anticipation.

Yanchen Guan、Haicheng Liao、Chengyue Wang、Bonan Wang、Jiaxun Zhang、Jia Hu、Zhenning Li

计算技术、计算机技术综合运输

Yanchen Guan,Haicheng Liao,Chengyue Wang,Bonan Wang,Jiaxun Zhang,Jia Hu,Zhenning Li.Domain-Enhanced Dual-Branch Model for Efficient and Interpretable Accident Anticipation[EB/OL].(2025-07-17)[2025-08-23].https://arxiv.org/abs/2507.12755.点此复制

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