Sensor-based road model estimation for autonomous driving

Julian Thomas, R. Rojas
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引用次数: 5

Abstract

In the course of the development and integration of the autonomous driving the knowledge about the current environment and especially the road is one of the basic requirements to fulfill the automated driving task. This information is often extracted from a precise map provided in the vehicle. Therefore the road course and the individual lanes are known in advance by using the map and a suitable ego position estimation. However, in some situations such a map may be invalid and therefore unusable. This can be a driving area which was never mapped or regions where the map is outdated because the environment has changed. The following paper addresses the problem of building a road model without using a map by only fusing measurements from different sensors mounted on the ego vehicle. As sensor measurements various information like lane markings painted on the ground, the position of other cars or occupancy grids can be used. They are transformed into a grid-based model and a geometrical description is extracted out of this model by the use of a novel path-planning based method. The proposed approach was tested with a vehicle equipped with sensors and real measurement data from German highways.
基于传感器的自动驾驶道路模型估计
在自动驾驶的开发和集成过程中,对当前环境特别是道路的了解是完成自动驾驶任务的基本要求之一。这些信息通常是从车辆提供的精确地图中提取的。因此,通过使用地图和适当的自我位置估计,可以提前知道道路路线和单个车道。然而,在某些情况下,这样的映射可能是无效的,因此无法使用。这可能是一个从未绘制过地图的驾驶区域,也可能是由于环境变化而地图已经过时的区域。下面的论文解决了在不使用地图的情况下通过仅融合安装在自我车辆上的不同传感器的测量数据来构建道路模型的问题。由于传感器可以测量各种信息,例如绘制在地面上的车道标记,因此可以使用其他车辆的位置或占用网格。将它们转换成基于网格的模型,并使用一种新的基于路径规划的方法从该模型中提取几何描述。该方法在一辆装有传感器的车辆上进行了测试,并获得了来自德国高速公路的真实测量数据。
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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