利用非地面网络的地面车辆相对定位

Yuanpeng Liu, Wenxuan Li, Qianxi Lu, Jian Wang, Yuan Shen
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引用次数: 3

摘要

车辆网络的大多数应用,如自动驾驶,都是基于相邻车辆精确的相对位置和方向信息。由于地理空间的限制,地面蜂窝网络并不总是可用的,因此可以使用非地面网络如无人机(UAV)和卫星来支持车辆的定位。本文提出了一种无人机辅助的地面车辆相对定位方案。每个节点与其他节点进行时延和角度测量,并接收GPS信号。导出了定位、方向和时钟偏差参数的Fisher信息矩阵(FIM)。FIM由两部分组成,分别对应于时间延迟和角度测量。研究了绝对定位和相对定位,利用信息不等式和子空间投影导出了绝对位置误差和相对位置误差的cram rs - rao下界。仿真结果表明,该方案可以实现半米的相对位置精度和一度的方位精度。
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Relative Localization of Ground Vehicles Using Non-Terrestrial Networks
Most applications of vehicular networks, such as automatic drive, are based on accurate relative position and orientation information of neighboring vehicles. Due to the geospatial restriction, ground cellular networks are not always available thus non-terrestrial networks such as unmanned aerial vehicles (UAV) and satellites can be used to support the localization of the vehicles. In this paper, we propose an UAV-aided relative localization scheme for ground vehicles. Each node makes time delay and angle measurements with other nodes, and receives GPS signals. The Fisher information matrix (FIM) is derived for the location, orientation and clock bias parameters. The FIM consists of two parts corresponding to the time delay and angle measurements, respectively. Both the absolute and relative localization are studied, and the Cramér-Rao lower bounds for absolute and relative position errors are derived using the information inequality and subspace projection. The simulation results show that the scheme can achieve half-meter relative position accuracy and one-degree orientation accuracy.
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