跨模态定位:使用汽车雷达在由可见光图像生成的地图中进行绝对地理定位

Peter A. Iannucci, Lakshay Narula, T. Humphreys
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引用次数: 3

摘要

本文探讨了在城市环境中定位配备雷达的汽车的可能性,相对于使用可见光摄像机数据创建的现有环境地图。这种跨模式定位可以在恶劣的天气条件下,即使车辆以前从未访问过该地区,也可以仅基于雷达实现可靠、低成本的绝对定位。这是因为预先存在的基于绝对参考的可见光地图(例如,由谷歌街景图像构建)可以用于定位,前提是该地图中的特征与车辆的雷达回波之间可以建立对应关系。利用汽车雷达进行跨模态定位面临的最大挑战是汽车雷达产生的特征极其稀疏,这阻碍了标准计算机视觉技术在跨模态配准中的应用。据作者所知,在基于可见光的地图中使用汽车级雷达进行跨模式定位是前所未有的。本文表明,该方法可用于水平误差小于61 cm(95%)的车辆定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-Modal Localization: Using automotive radar for absolute geolocation within a map produced with visible-light imagery
This paper explores the possibility of localizing an automotive-radar-equipped vehicle within an urban environment relative to an existing map of the environment created using data from visible light cameras. Such cross-modal localization would enable robust, low-cost absolute localization in poor weather conditions based only on radar even when the vehicle has never previously visited the area. This is because a pre-existing absolutely-referenced visible-light-based map (e.g., constructed from Google Street View images) could be exploited for localization provided that a correspondence between features in this map and the vehicle's radar returns can be established. The greatest challenge presented by cross-modal localization with automotive radar is the extreme sparseness of automotive-radar-produced features, which prevents application of standard computer vision techniques for the cross-modal registration. To the best of the authors' knowledge, cross-modal localization using automotive-grade radar within a visible-light-based map is unprecedented. The current paper demonstrates that it can be used for vehicle localization with horizontal errors below 61 cm (95%).
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