Improvement of Pedestrian Positioning Precision by Using Spatial Correlation of Multipath Error

Yearlor Patou, S. Obana, Suhua Tang
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引用次数: 4

Abstract

Pedestrian-to-vehicle communication, which delivers pedestrian position to vehicles to enable real-time estimation of pedestrian-vehicle distance even in the absence of line-of-sight path, has attracted much attention recently. This heavily relies on GPS, whose positioning performance, however, may be greatly degraded in urban canyons due to the influence of multipath error. In this paper, we first investigate the spatial correlation of multipath error. Then, we propose to estimate the multipath error at a pedestrian by (a) using a regression model and (b) Ieveraging the multipath errors at nearby points, which may be, e.g., provided by vehicles that happen to be there. Finally, the pseudo-ranges, corrected by removing the estimated multipath errors, are used to compute an accurate pedestrian position. The proposed method is evaluated with ray tracing simulation and 3D map. Compared with single point positioning without dealing with multipath error, the proposed method greatly reduces pedestrian positioning error by almost one order of magnitude, to 2.2m in the urban areas of Tokyo.
利用多径误差空间相关性提高行人定位精度
行人与车辆通信(pedestrian- to-vehicle communication)是一种将行人位置传递给车辆,以便在没有视线路径的情况下实时估计行人与车辆距离的技术,最近引起了人们的广泛关注。这在很大程度上依赖于GPS,而GPS在城市峡谷中由于多径误差的影响,定位性能可能会大大降低。本文首先研究了多径误差的空间相关性。然后,我们建议通过(a)使用回归模型和(b)利用附近点的多路径误差来估计行人处的多路径误差,这些多路径误差可能是由碰巧在那里的车辆提供的。最后,通过去除估计的多径误差来校正伪距离,用于计算准确的行人位置。通过光线追踪仿真和三维地图对该方法进行了验证。与不处理多径误差的单点定位相比,该方法将行人定位误差大大降低了近一个数量级,东京市区的行人定位误差为2.2m。
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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