雷达和激光传感定位和制图的比较分析

Malcolm Mielle, Martin Magnusson, A. Lilienthal
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引用次数: 20

摘要

激光雷达和照相机是同时定位和绘图(SLAM)中最常用的传感器。然而,在某些情况下,例如在环境中存在火灾和烟雾时,它们是无效的。虽然雷达受这种条件的影响要小得多,但在可实现的SLAM精度方面,雷达和激光雷达很少进行比较。我们提出了一种新型雷达传感器的精度与Velodyne激光雷达的定位和测绘的原则性比较。我们在室内实验室环境中进行了三次实验,通过计算相对于地面真实参考定位系统的位置和方向位移来评估这两种传感器的性能。我们使用了两种不同的SLAM算法,发现雷达传感器的平均位置位移小于0.037 m,而激光雷达的平均位置位移为0.011 m。我们表明,虽然生成的地图精度略低于激光雷达,但雷达可以准确地执行SLAM并构建环境地图,甚至包括角落和小墙等细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative analysis of radar and lidar sensing for localization and mapping
Lidars and cameras are the sensors most commonly used for Simultaneous Localization And Mapping (SLAM). However, they are not effective in certain scenarios, e.g. when fire and smoke are present in the environment. While radars are much less affected by such conditions, radar and lidar have rarely been compared in terms of the achievable SLAM accuracy. We present a principled comparison of the accuracy of a novel radar sensor against that of a Velodyne lidar, for localization and mapping. We evaluate the performance of both sensors by calculating the displacement in position and orientation relative to a ground-truth reference positioning system, over three experiments in an indoor lab environment. We use two different SLAM algorithms and found that the mean displacement in position when using the radar sensor was less than 0.037 m, compared to 0.011 m for the lidar. We show that while producing slightly less accurate maps than a lidar, the radar can accurately perform SLAM and build a map of the environment, even including details such as corners and small walls.
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