ExpressMind: A Multimodal Pretrained Large Language Model for Expressway Operation
Zihe Wang, Yihuan Wang, Haiyang Yu. Zhiyong Cui, Xiaojian Liao, Chengcheng Wang, Yonglin Tian, Yongxin Tong

TL;DR
ExpressMind is a novel multimodal large language model designed for intelligent expressway operations, integrating diverse data sources and reasoning mechanisms to improve traffic management and incident response.
Contribution
This paper introduces the first full-stack expressway dataset, a dual-layer pre-training paradigm, and a graph-augmented RAG framework for multimodal traffic analysis.
Findings
Outperforms existing models in event detection
Enhances safety response generation
Improves complex traffic analysis
Abstract
The current expressway operation relies on rule-based and isolated models, which limits the ability to jointly analyze knowledge across different systems. Meanwhile, Large Language Models (LLMs) are increasingly applied in intelligent transportation, advancing traffic models from algorithmic to cognitive intelligence. However, general LLMs are unable to effectively understand the regulations and causal relationships of events in unconventional scenarios in the expressway field. Therefore, this paper constructs a pre-trained multimodal large language model (MLLM) for expressways, ExpressMind, which serves as the cognitive core for intelligent expressway operations. This paper constructs the industry's first full-stack expressway dataset, encompassing traffic knowledge texts, emergency reasoning chains, and annotated video events to overcome data scarcity. This paper proposes a dual-layer…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Multimodal Machine Learning Applications · Autonomous Vehicle Technology and Safety
