Autonomous Driving Research
Autonomous driving research aims to develop safe and reliable self-driving systems through advancements in perception, planning, and control. Current efforts focus on improving model robustness in challenging scenarios (e.g., cyclist interactions, rare events, and inclement weather) using techniques like reinforcement learning to fine-tune agent behavior models and vision-language models for enhanced scene understanding. This research is crucial for advancing the safety and reliability of autonomous vehicles, impacting both the scientific understanding of complex multi-agent systems and the development of practical, real-world applications.
Papers
SimGen: Simulator-conditioned Driving Scene Generation
Yunsong Zhou, Michael Simon, Zhenghao Peng, Sicheng Mo, Hongzi Zhu, Minyi Guo, Bolei Zhou
Multiagent Multitraversal Multimodal Self-Driving: Open MARS Dataset
Yiming Li, Zhiheng Li, Nuo Chen, Moonjun Gong, Zonglin Lyu, Zehong Wang, Peili Jiang, Chen Feng
UruBots Autonomous Cars Team One Description Paper for FIRA 2024
Pablo Moraes, Christopher Peters, Any Da Rosa, Vinicio Melgar, Franco Nuñez, Maximo Retamar, William Moraes, Victoria Saravia, Hiago Sodre, Sebastian Barcelona, Anthony Scirgalea, Juan Deniz, Bruna Guterres, André Kelbouscas, Ricardo Grando