Intersection Scenario
Intersection scenarios, encompassing diverse applications from traffic management to object detection and 3D vision, focus on improving efficiency and safety where multiple entities converge. Current research utilizes various approaches, including reinforcement learning for traffic control, deep learning models (like UNet and DETR variants) for image processing and object tracking, and novel loss functions (e.g., Gr-IoU, Focaler-IoU) to enhance accuracy. These advancements are significant for improving autonomous systems, optimizing urban infrastructure, and enhancing the reliability of machine learning models in complex environments.
Papers
An Autonomous Driving Model Integrated with BEV-V2X Perception, Fusion Prediction of Motion and Occupancy, and Driving Planning, in Complex Traffic Intersections
Fukang Li, Wenlin Ou, Kunpeng Gao, Yuwen Pang, Yifei Li, Henry Fan
UniTSA: A Universal Reinforcement Learning Framework for V2X Traffic Signal Control
Maonan Wang, Xi Xiong, Yuheng Kan, Chengcheng Xu, Man-On Pun