论文标题
安全有效城市驾驶的任务运动计划
Task-Motion Planning for Safe and Efficient Urban Driving
论文作者
论文摘要
自动驾驶汽车需要在任务级别进行计划,以计算一系列符号行动,例如左右合并,以满足人们的服务请求,而效率是主要问题。同时,车辆必须计算连续轨迹以在最重要的安全水平上执行动作。自动驾驶中的任务运动计划面临最大化任务级效率的问题,同时确保运动级安全性。为此,我们为城市驾驶(TMPUD)制定了算法任务运动计划,该计划首次使任务和运动计划者能够就驾驶行为的安全水平进行交流。使用现实的城市驾驶模拟平台对TMPUD进行了评估。结果表明,TMPUD的性能明显优于文献效率的竞争基线,同时确保行为的安全性。
Autonomous vehicles need to plan at the task level to compute a sequence of symbolic actions, such as merging left and turning right, to fulfill people's service requests, where efficiency is the main concern. At the same time, the vehicles must compute continuous trajectories to perform actions at the motion level, where safety is the most important. Task-motion planning in autonomous driving faces the problem of maximizing task-level efficiency while ensuring motion-level safety. To this end, we develop algorithm Task-Motion Planning for Urban Driving (TMPUD) that, for the first time, enables the task and motion planners to communicate about the safety level of driving behaviors. TMPUD has been evaluated using a realistic urban driving simulation platform. Results suggest that TMPUD performs significantly better than competitive baselines from the literature in efficiency, while ensuring the safety of driving behaviors.