2D Positioning of Ground Vehicles using Stereo Vision and a Single Ranging Link

Chen Zhu, G. Giorgi, Young-Hee Lee, Christoph Gnther
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Abstract

In this work we propose a positioning method for ground vehicles in planar motion, based on sensor fusion of stereo cameras and sparse ranging measurements obtained from a wireless network. The proposed method is an alternative localization solution when Global Navigation Satellite System (GNSS) is unavailable, with notably low requirements on infrastructures. It does not require a database of landmarks and it works in single-link scenarios, i.e., at most one station reachable at any time. In theory, to estimate two dimensional position without ambiguity, at least three ranging anchors are required. However, in GNSS-denied environments, it is often difficult to achieve simultaneous connectivity to three wireless stations. We propose to apply visual odometry technique to estimate relative motion of the vehicle using stereo cameras, and fuse the vision system with a single ranging link. The sensor fusion method can resolve absolute position unambiguously if the vehicle sequentially connects to two stations with known coordinates. Furthermore, the accuracy of the estimated trajectory is improved by fusing both ranging and visual measurements.
使用立体视觉和单测距链路的地面车辆二维定位
在这项工作中,我们提出了一种基于立体相机传感器融合和无线网络稀疏测距测量的平面运动地面车辆定位方法。该方法是全球导航卫星系统(GNSS)不可用时的一种替代定位方案,对基础设施的要求较低。它不需要地标数据库,并且在单链路场景下工作,即在任何时间最多可到达一个站点。理论上,要估计二维位置而不产生歧义,至少需要三个测距锚。然而,在拒绝gnss的环境中,通常很难实现与三个无线站的同时连接。我们提出将视觉里程计技术应用于立体摄像机对车辆的相对运动进行估计,并将视觉系统与单个测距链路融合。当车辆顺序连接到两个已知坐标的站点时,传感器融合方法可以明确地确定绝对位置。此外,通过融合测距和目视测量,提高了弹道估计的精度。
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