An unmanned driving system based on lane-level path planning

Zhaolin Ma, Jian Li, Feng Liu, Huijun Di
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Abstract

Automated driving systems promise low cost and low human consumption. If it is used in mine, canyons and other environments, it will have huge economic benefits. However, in such environments as mines and urban canyons, there is a problem that satellite signals are blocked, leading to the failure of positioning. To solve this problem, we integrate lidar, inertial measurement unit and Real-Time Kinematic Global Position System to achieve high-precision positioning in urban canyon and open environment. Besides, there are many curves on the roads in urban parks, which adds great difficulty to unmanned driving, so we construct a lane-level high-precision environmental map, which realizes path planning based on lane and stable driving of unmanned vehicles. Furthermore, we orderly integrate perceiving, mapping and positioning, path planning and motion control modules to form a lightweight unmanned driving system, which perceive the environment by lidar, inertial measurement unit and Real-Time Kinematic Global Position System, use lightweight SC-LEGO-LOAM to build environment map, use normal distribution transformation to achieve rapid vehicle positioning, and use lane-level high-precision map to achieve global static path planning, use lattice algorithm to realize smooth and stable local path planning, then transmit it to the vehicle site. After real vehicle testing, the vehicle can be driven stably in the complex environment of the park. This automated driving system can be applied in mines and urban parks and can realize unmanned transportation. It has huge economic benefits. The lane-level high-precision map we have built is the development direction of the future driverless electronic map.
基于车道级路径规划的无人驾驶系统
自动驾驶系统承诺低成本和低人力消耗。如果在矿山、峡谷等环境中使用,将产生巨大的经济效益。但在矿山、城市峡谷等环境中,存在卫星信号被阻挡的问题,导致定位失败。为了解决这一问题,我们将激光雷达、惯性测量单元和实时运动全球定位系统集成在一起,实现了城市峡谷和开放环境下的高精度定位。此外,城市公园道路弯道较多,给无人驾驶增加了很大难度,因此我们构建了车道级高精度环境地图,实现了基于车道的路径规划和无人驾驶车辆的稳定行驶。进一步,我们将感知、测绘定位、路径规划、运动控制等模块有序整合,形成轻量化无人驾驶系统,通过激光雷达、惯性测量单元和实时运动全球定位系统感知环境,使用轻型SC-LEGO-LOAM构建环境地图,使用正态分布变换实现车辆快速定位,使用车道级高精度地图实现全局静态路径规划。利用点阵算法实现平滑稳定的局部路径规划,并将其传输到车辆现场。经过实车测试,车辆可以在复杂的园区环境中稳定行驶。该自动驾驶系统可应用于矿山和城市公园,可实现无人驾驶运输。它具有巨大的经济效益。我们构建的车道级高精度地图是未来无人驾驶电子地图的发展方向。
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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