Precise Vehicle Localization based on Graph Optimization with Time-Relative RTK–GNSS

Taro Suzuki
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Abstract

The global navigation satellite system (GNSS) has recently been used for the autonomous control of unmanned vehicles. However, GNSS data is not utilized to its full potential for autonomously navigating vehicles in urban environments. This is largely owing to the possibility of the degradation of GNSS observables (e.g., multipath and poor satellite geometry) in an urban environment. The GNSS Doppler frequency can be used to derive an accurate velocity without the requirement for a base station. This velocity is quite tolerant to the strong multipath condition as compared with the GNSS pseudorange-based position solution. Thus, the Doppler velocity can be used to estimate vehicle trajectories. However, positioning errors accumulate over time owing to the error in the estimated Doppler velocity. To overcome the aforementioned issues, we leverage the advances made within the robotics community surrounding the pose-graph-based optimization and localization technique. The main idea of this study is that a loop closure of the pose graph is generated from a time-relative real-time kinematic GNSS (TR-RTK–GNSS) technique. The TR-RTK-GNSS is based on time-differential carrier phase positioning, which is a method comprising the implementation of a precise carrier-phase-based differential GNSS with a single low-cost GNSS receiver. As compared with the conventional RTK–GNSSs, we can directly compute the vehicle relative position using only a stand-alone GNSS receiver. The initial pose graph is generated from the accumulated velocity computed using a GNSS Doppler measurement. To cancel the accumulated error of the velocity, we use the TR-RTK–GNSS as the loop closure in the graph-based optimization frameworks. To confirm the effectiveness of the proposed technique, two kinematic positioning tests were performed using an unmanned aerial vehicle and a ground vehicle. In conclusion, we can estimate the vehicle trajectory with centimeter accuracy in an open-sky environment and with a few tens of centimeters accuracy in an urban environment using only a stand-alone GNSS receiver. Based on the test results, we concluded that the proposed technique is effective for estimating the precise vehicle trajectory.
基于时间相关RTK-GNSS图优化的车辆精确定位
全球导航卫星系统(GNSS)最近被用于无人驾驶车辆的自主控制。然而,GNSS数据并没有充分发挥其在城市环境中自动导航车辆的潜力。这在很大程度上是由于城市环境中GNSS观测值(例如,多径和卫星几何形状差)可能会退化。GNSS多普勒频率可以在不需要基站的情况下获得精确的速度。与基于GNSS伪橙的位置解相比,该速度对强多径条件具有较强的容忍度。因此,多普勒速度可以用来估计车辆的轨迹。然而,由于估计多普勒速度的误差,定位误差随着时间的推移而累积。为了克服上述问题,我们利用机器人社区围绕基于姿态图的优化和定位技术取得的进展。本研究的主要思想是利用时间相对实时动态GNSS (TR-RTK-GNSS)技术生成位姿图的闭环。TR-RTK-GNSS基于时间差载波相位定位,这是一种使用单个低成本GNSS接收器实现精确载波相位差分GNSS的方法。与传统的rtk - GNSS相比,我们可以只使用一个独立的GNSS接收机直接计算车辆的相对位置。初始姿态图由GNSS多普勒测量计算的累积速度生成。为了消除速度累积误差,我们在基于图的优化框架中使用TR-RTK-GNSS作为闭环。为了验证所提出技术的有效性,使用无人机和地面车辆进行了两次运动学定位试验。综上所述,我们仅使用一个独立的GNSS接收器,就可以在开放天空环境中以厘米精度估计车辆轨迹,在城市环境中以几十厘米的精度估计车辆轨迹。实验结果表明,该方法对于精确估计车辆轨迹是有效的。
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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