Traffic Simulation
Traffic simulation aims to create realistic virtual environments for testing and analyzing traffic flow, particularly for autonomous vehicle development and transportation planning. Current research emphasizes developing highly controllable and realistic simulations using various techniques, including diffusion models, large language models (LLMs) for scenario generation and control, and deep learning architectures like transformers and graph neural networks to model agent behavior and interactions. These advancements are crucial for improving the safety and efficiency of autonomous vehicles and optimizing traffic management strategies in real-world settings.
Papers
Optimal Smoothing Distribution Exploration for Backdoor Neutralization in Deep Learning-based Traffic Systems
Yue Wang, Wending Li, Michail Maniatakos, Saif Eddin Jabari
Editing Driver Character: Socially-Controllable Behavior Generation for Interactive Traffic Simulation
Wei-Jer Chang, Chen Tang, Chenran Li, Yeping Hu, Masayoshi Tomizuka, Wei Zhan
CBLab: Supporting the Training of Large-scale Traffic Control Policies with Scalable Traffic Simulation
Chumeng Liang, Zherui Huang, Yicheng Liu, Zhanyu Liu, Guanjie Zheng, Hanyuan Shi, Kan Wu, Yuhao Du, Fuliang Li, Zhenhui Li
TraInterSim: Adaptive and Planning-Aware Hybrid-Driven Traffic Intersection Simulation
Pei Lv, Xinming Pei, Xinyu Ren, Yuzhen Zhang, Chaochao Li, Mingliang Xu