城市驾驶辅助和高度自动化驾驶的环境感知

Claudius Gläser, T. Michalke, Lutz Bürkle, F. Niewels
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引用次数: 15

摘要

过去,驾驶员辅助系统主要针对高速公路或停车场景,而今天,辅助城市交通的系统越来越受到关注。由于在城市地区驾驶的特点是必须涵盖各种各样的情况,因此对于这些系统的感知来说,找到周围车辆的充分代表是一项具有挑战性的任务。在本文中,我们提出了我们的感知系统是专门为城市内部驾驶的需求而设计的。它首先具有基于插件的架构,可以支持多个传感器设置以及不同的驾驶员辅助功能。其次,它的特点是混合建模方法,结合了众所周知的基于模型的目标跟踪技术和网格方面的无模型表示。我们将详细介绍使用3D激光雷达传感器的系统的具体实现。最后,展示了该系统如何在窄路辅助系统中使用。窄路辅助系统是下一代驾驶员辅助系统,可帮助驾驶员安全通过市中心狭窄的道路通道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Environment perception for inner-city driver assistance and highly-automated driving
While driver assistance systems mainly targeted highway or parking scenarios in the past, systems assisting in inner-city traffic increasingly get into focus today. Since driving in urban areas is characterized by a larger variety of situations that have to be covered, finding an adequate representation of the vehicle surrounding is a challenging task for the perception of these systems. In this paper we present our perception system that has been specifically designed for the demands of inner-city driving. It first features a plugin-based architecture by which multiple sensor setups as well as different driver assistance functions can be supported. Second, it is characterized by a hybrid modeling approach that combines the well known model-based object tracking technique with model-free representations in terms of grids. We will present details on a specific implementation of the system using a 3D lidar sensor. Finally, it is shown how the system is used in the Narrow Road Assistant - a next-generation driver assistance system supporting the driver in safely passing narrow road passages in inner-city.
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