基于在线公共地图的大规模雷达定位

Ziyang Hong, Y. Pétillot, Kaicheng Zhang, S. Xu, Sen Wang
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引用次数: 0

摘要

在本文中,我们建议使用在线公共地图,例如OpenStreetMap (OSM),进行大规模的基于雷达的定位,而不需要事先的传感地图。只要在线公共地图覆盖了操作区域,就可以潜在地将定位系统扩展到全球任何地方,而无需构建、保存或维护传感地图。使用OSM的现有方法仅使用路由网络或语义信息。在以往的工作中,这两种信息来源没有结合在一起,而我们提出的系统将它们融合在一起,以提高定位精度。我们在三个不同大洲收集的三个开放数据集上进行的实验表明,所提出的系统优于最先进的定位方法,最多可减少50%的位置误差。我们为社区发布了一个开源实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-Scale Radar Localization using Online Public Maps
In this paper, we propose using online public maps, e.g., OpenStreetMap (OSM), for large-scale radar-based localization without needing a prior sensing map. This can potentially extend the localization system to anywhere worldwide without building, saving, or maintaining a sensing map, as long as an online public map covers the operating area. Existing methods using OSM only use route network or semantics information. These two sources of information are not combined in the previous works, while our proposed system fuses them to improve localization accuracy. Our experiments, on three open datasets collected from three different continents, show that the proposed system outperforms the state-of-the-art localization methods, reducing up to 50% of position errors. We release an open-source implementation for the community.
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