High definition map-based vehicle localization for highly automated driving: Geometric analysis

Shuran Zheng, Jinling Wang
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引用次数: 21

Abstract

High definition (HD) map is a critical part of highly automated driving (HAD) technology and shows potential for high precision vehicle localization when GNSS signals are not available. The current study of using HD map for localiz ation is mostly based on Simultaneous Localization and Mapping (SLAM) technique, which requires high computing power, huge storage space, and quick data transmission ability. Therefore, a study of a new HD map based vehicle localization method which requires less computation is necessary. Geometry is one key component that affects the quality of localization, including accuracy, reliability, and separability. Analysing the geometry can provide reference for designing a localization system to meet the quality requirement of HAD, but is rarely studied. This paper aims to design a high precision and reliable localization system using HD map as a sensor, and the influence of geometry is also explored. Geometric strength is evaluated under different scenarios considering three factors, including feature distribution type, feature number, and distance between vehicle and feature. The results show Minimum Detectable Bias (MDB) and Minimal Separable Bias (MSB) are mostly affected by feature number and distance between vehicle and feature. Randomly distribution, more detected features and close distance between the host vehicle and the features may all contribute to good quality of vehicle position estimation.
基于地图的高度自动驾驶车辆定位:几何分析
高清晰度(HD)地图是高度自动驾驶(HAD)技术的重要组成部分,在没有GNSS信号的情况下,显示出高精度车辆定位的潜力。目前利用高清地图进行定位的研究多是基于SLAM (Simultaneous Localization and Mapping)技术,该技术要求计算能力高、存储空间大、数据传输速度快。因此,研究一种计算量较小的基于高清地图的车辆定位方法是十分必要的。几何是影响定位质量的一个关键因素,包括精度、可靠性和可分离性。分析其几何形状可以为设计满足HAD质量要求的定位系统提供参考,但研究较少。本文旨在设计一种以高清地图为传感器的高精度、可靠的定位系统,并探讨了几何形状对定位系统的影响。考虑特征分布类型、特征数量和车辆与特征之间的距离三个因素,对不同场景下的几何强度进行评估。结果表明,最小可检测偏差(MDB)和最小可分离偏差(MSB)主要受特征数量和车辆与特征之间距离的影响。随机分布、检测到的特征较多以及主车辆与特征之间的距离较近都有助于提高车辆位置估计的质量。
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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