基于优化长时间序列GNSS和IMU数据的城市低成本车道水平定位

J. Meguro, T. Arakawa, Syunsuke Mizutani, Aoki Takanose
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引用次数: 9

摘要

本文提出了一种在密集城市环境中实现精确鲁棒位置和姿态估计的新技术。该技术充分利用平均效应对长时间(几十秒)序列传感器数据进行优化。我们提出的方案只使用一个低成本的GNSS接收器,一个MEMS IMU和一个速度传感器。在日本市区进行的评估试验表明,该方案可实现稳健的车道级绝对定位结果(2DRMS, 0.9 m),且航向标准差为0.4°,俯仰角标准差为0.6°。评估测试表明,我们提出的方案的精度几乎达到了配备高成本传感器的调查级制图系统的水平。另一方面,我们的原型传感器的总成本只有几百美元。我们相信,我们提出的位置和姿态估计方案可以增强车辆在驾驶辅助系统、自动驾驶汽车和地图系统等系统中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-cost Lane-level Positioning in Urban Area Using Optimized Long Time Series GNSS and IMU Data
In this paper, we proposed a novel technique to realize accurate and robust position and pose estimation in a dense urban area. The technique make the best use of averaging effect to optimize long time (over several tens of seconds) series sensor data. Our proposed scheme uses just a low-cost GNSS receiver, a MEMS IMU, and a speed sensor. Evaluation tests in a Japanese urban area showed that our proposed scheme can realize robust lane-level absolute positioning results (2DRMS, 0.9 m). In addition, the standard deviation of the heading is 0.4°, and that of the pitch angle is 0.6°. Evaluation tests showed that the accuracy of our proposed scheme almost reached levels of the survey level mapping system, which is equipped with high-cost sensors. On the other hands, the total sensor cost for our prototype was only several hundreds of dollars. We believe that our proposed position and pose estimation scheme enables enhanced vehicle application to systems such as driver assistance systems, autonomous vehicle, and mapping systems.
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