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首页> 外文期刊>IEEE Transactions on Intelligent Vehicles >Lane-Level Localization and Mapping in GNSS-Challenged Environments by Fusing Lidar Data and Cellular Pseudoranges
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Lane-Level Localization and Mapping in GNSS-Challenged Environments by Fusing Lidar Data and Cellular Pseudoranges

机译:通过融合激光雷达数据和细胞伪距在GNSS挑战环境中进行车道级定位和制图

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摘要

A method for achieving lane-level localization in global navigation satellite system (GNSS)-challenged environments is presented. The proposed method uses the pseudoranges drawn from unknown ambient cellular towers as an exclusive aiding source for a vehicle-mounted light detection and ranging (lidar) sensor. The following scenario is considered. A vehicle aiding its lidar with GNSS signals enters an environment where these signals become unusable. The vehicle is equipped with a receiver capable of producing pseudoranges to unknown cellular towers in its environment. These pseudoranges are fused through an extended Kalman filter to aid the lidar odometry, while estimating the vehicle's own state (3-D position and orientation) simultaneously with the position of the cellular towers and the difference between the receiver's and cellular towers’ clock error states (bias and drift). The proposed method is computationally efficient and is demonstrated to achieve lane-level accuracy in different environments. Simulation and experimental results with the proposed method are presented illustrating a close match between the vehicle's true trajectory and estimated using the cellular-aided lidar odometry over a 1 km trajectory. The proposed method yielded a 68% reduction in the 2-D position root mean-squared error (RMSE) over lidar odometry-only.
机译:提出了一种在充满挑战的全球导航卫星系统(GNSS)环境中实现车道级定位的方法。所提出的方法使用从未知周围蜂窝塔中提取的伪距作为车载光检测和测距(激光)传感器的专用辅助源。考虑以下情形。借助GNSS信号帮助其激光雷达的车辆进入无法使用这些信号的环境。该车辆配备了能够在其环境中对未知蜂窝塔产生伪距的接收器。这些伪距通过扩展的卡尔曼滤波器融合,以辅助激光雷达里程计,同时估计车辆自身的状态(3-D位置和方向)以及蜂窝塔的位置以及接收器和蜂窝塔的时钟误差状态之间的差异(偏差和漂移)。所提出的方法在计算上是有效的,并且被证明可以在不同环境中实现车道级精度。提出的方法的仿真和实验结果说明了车辆的真实轨迹与在1 km的轨迹上使用蜂窝辅助激光雷达测距法估算的车辆之间的紧密匹配。所提出的方法比仅使用激光雷达测距法的二维位置根均方误差(RMSE)降低了68%。

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