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Ground Truth Generation for Quantitative Performance Evaluation of Localization Methods in Urban Areas

机译:用于地面定位方法定量性能评估的地面真相生成

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This paper presents an offline ground truth generation method using LIDAR(Light Detection and Ranging) scans and odometry. The generated ground truth allows quantitative evaluation of the performance of self-localization methods in urban areas where GNSS(Global Navigation Satellite System) cannot be trusted. The proposed method determines the vehicle pose (position and orientation) by aligning the LIDAR input with previously collected point cloud data. However, as alignment convergences are affected by the environment around the vehicle during each LIDAR scan, it can be erroneous. Incorrect estimates are removed and poses are interpolated by relying on odometry; which is locally accurate. A step by step optimization approach is adopted to yield the most accurate result. Experiments performed in a typical urban environment, with many buildings and surrounding obstacles, demonstrated the effectiveness of the proposed method.
机译:本文提出了一种使用LIDAR(光探测与测距)扫描和测距法的离线地面真相生成方法。生成的地面真相可以定量评估无法信任GNSS(城市导航卫星系统)的城市地区自定位方法的性能。所提出的方法通过将LIDAR输入与先前收集的点云数据对齐来确定车辆姿态(位置和方向)。但是,由于对齐收敛会在每次LIDAR扫描期间受到车辆周围环境的影响,因此可能是错误的。依靠测距法去掉了不正确的估计值并插入了姿势;这是本地准确的。采用逐步优化方法以产生最准确的结果。在具有许多建筑物和周围障碍物的典型城市环境中进行的实验证明了该方法的有效性。

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