Spatially-partitioned environmental representation and planning architecture for on-road autonomous driving

W. Zhan, Jianyu Chen, Ching-yao Chan, Changliu Liu, M. Tomizuka
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引用次数: 49

Abstract

Conventional layered planning architecture temporally partitions the spatiotemporal motion planning by the path and speed, which is not suitable for lane change and overtaking scenarios with moving obstacles. In this paper, we propose to spatially partition the motion planning by longitudinal and lateral motions along the rough reference path in the Frenét Frame, which makes it possible to create linearized safety constraints for each layer in a variety of on-road driving scenarios. A generic environmental representation methodology is proposed with three topological elements and corresponding longitudinal constraints to compose all driving scenarios mentioned in this paper according to the overlap between the potential path of the autonomous vehicle and predicted path of other road users. Planners combining A∗ search and quadratic programming (QP) are designed to plan both rough long-term longitudinal motions and short-term trajectories to exploit the advantages of both search-based and optimization-based methods. Limits of vehicle kinematics and dynamics are considered in the planners to handle extreme cases. Simulation results show that the proposed framework can plan collision-free motions with high driving quality under complicated scenarios and emergency situations.
道路自动驾驶的空间分块环境表示与规划架构
传统的分层规划架构将时空运动规划按路径和速度进行时间划分,不适用于有移动障碍物的变道和超车场景。在这篇论文中,我们提出了在空间上划分的运动规划,沿着大致参考路径的纵向和横向运动在frenzimt框架中,这使得在各种道路驾驶场景中为每一层创建线性化的安全约束成为可能。根据自动驾驶车辆的潜在路径与其他道路使用者的预测路径之间的重叠,提出了一种具有三个拓扑元素和相应纵向约束的通用环境表示方法来组合本文提到的所有驾驶场景。结合A *搜索和二次规划(QP)的规划器设计用于规划粗略的长期纵向运动和短期轨迹,以利用基于搜索和基于优化的方法的优势。在规划中考虑了车辆运动学和动力学的极限,以处理极端情况。仿真结果表明,该框架能够在复杂场景和紧急情况下规划出高质量的无碰撞运动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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