GNSS and LiDAR odometry are complementary as they provide absolute and relative positioning, respectively. Their integration in a loosely-coupled manner is straightforward but is challenged in urban canyons due to the GNSS signal reflections. Recent proposed 3D LiDAR-aided (3DLA) GNSS methods employ the point cloud map to identify the non-line-of-sight (NLOS) reception of GNSS signals. This facilitates the GNSS receiver to obtain improved urban positioning but not achieve a sub-meter level. GNSS real-time kinematics (RTK) uses carrier phase measurements to obtain decimeter-level positioning. In urban areas, the GNSS RTK is not only challenged by multipath and NLOS-affected measurement but also suffers from signal blockage by the building. The latter will impose a challenge in solving the ambiguity within the carrier phase measurements. In the other words, the model observability of the ambiguity resolution (AR) is greatly decreased. This paper proposes to generate virtual satellite (VS) measurements using the selected LiDAR landmarks from the accumulated 3D point cloud maps (PCM). These LiDAR-PCM-made VS measurements are tightly-coupled with GNSS pseudorange and carrier phase measurements. Thus, the VS measurements can provide complementary constraints, meaning providing low-elevation-angle measurements in the across-street directions. The implementation is done using factor graph optimization to solve an accurate float solution of the ambiguity before it is fed into LAMBDA. The effectiveness of the proposed method has been validated by the evaluation conducted on our recently open-sourced challenging dataset, UrbanNav. The result shows the fix rate of the proposed 3DLA GNSS RTK is about 30% while the conventional GNSS-RTK only achieves about 14%. In addition, the proposed method achieves sub-meter positioning accuracy in most of the data collected in challenging urban areas.
翻译:GNSS 和 LIDAR odology 是互补的,因为它们分别提供绝对和相对定位。 以松散的混合方式整合它们是直截了当的,但由于全球导航卫星系统信号反射,在城市峡谷中受到挑战。 最近提出的3DLDAR辅助(3DLA)GNSS方法使用点云图确定非视距(NLOS)接收GNSS信号的情况。这便于GNSS接收器获得更好的城市定位,但没有达到子计量水平。 GNSS 实时直径运动(RTK)使用承运人级测距测量来获得离子级定位定位定位。 在城市地区,GNSS RT不仅受到多路和NLOS影响测量的挑战,而且还受到建筑信号阻隔。后者将给解决承运人级测量中的模糊性带来挑战。 换句话说,提议的模糊度分辨率分辨率解析(AR)的模型可大大降低。 本文提议,仅利用从累积的3D点云图(PCM)中选取的具有挑战性的3DAR 级测量结果,在GNSLM-CS 的精确度测量中可以提供高度的VS 。