This paper proposes a perception and path planning pipeline for autonomous racing in an unknown bounded course. The pipeline was initially created for the 2021 evGrandPrix autonomous division and was further improved for the 2022 event, both of which resulting in first place finishes. Using a simple LiDAR-based perception pipeline feeding into an occupancy grid based expansion algorithm, we determine a goal point to drive. This pipeline successfully achieved reliable and consistent laps in addition with occupancy grid algorithm to know the ways around a cone-defined track with an averaging speeds of 6.85 m/s over a distance 434.2 meters for a total lap time of 63.4 seconds.
翻译:本文提出在未知的界限内进行自主赛的视觉和路径规划管道。 管道最初是为2021 ev GravndPrix自治区创建的,后来为2022 年事件作了进一步的改进,导致第一位的终点。 我们使用一个简单的基于LiDAR的视觉管道,将一个基于占用网的扩展算法输入一个基于占用网的扩展算法,我们决定了驱动的目标点。 管道除了使用网算法,成功地实现了可靠和连贯的圈圈圈,以了解连接线定义的轨道的路径,平均速度为6.85米/秒,距离434.2米,总行距为63.4秒。