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On-Site Sensor Recalibration of a Spinning Multi-Beam LiDAR System Using Automatically-Detected Planar Targets

机译:使用自动检测平面目标的旋转多光束LiDAR系统的现场传感器重新校准

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摘要

This paper presents a fully-automated method to establish a calibration dataset from on-site scans and recalibrate the intrinsic parameters of a spinning multi-beam 3-D scanner. The proposed method has been tested on a Velodyne HDL-64E S2 LiDAR system, which contains 64 rotating laser rangefinders. By time series analysis, we found that the collected range data have random measurement errors of around ±25 mm. In addition, the layered misalignment of scans among the rangefinders, which is identified as a systematic error, also increases the difficulty to accurately locate planar surfaces. We propose a temporal-spatial range data fusion algorithm, along with a robust RANSAC-based plane detection algorithm to address these issues. Furthermore, we formulate an alternative geometric interpretation of sensory data using linear parameters, which is advantageous for the calibration procedure. The linear representation allows the proposed method to be generalized to any LiDAR system that follows the rotating beam model. We also confirmed in this paper, that given effective calibration datasets, the pre-calibrated factory parameters can be further tuned to achieve significantly improved performance. After the optimization, the systematic error is noticeable lowered, and evaluation shows that the recalibrated parameters outperform the factory parameters with the RMS planar errors reduced by up to 49%.
机译:本文提出了一种全自动方法,可通过现场扫描建立校准数据集并重新校准旋转多光束3-D扫描仪的固有参数。该方法已在Velodyne HDL-64E S2 LiDAR系统上进行了测试,该系统包含64个旋转激光测距仪。通过时间序列分析,我们发现收集的距离数据具有大约±25 mm的随机测量误差。此外,测距仪之间扫描的分层错位被识别为系统错误,这也增加了精确定位平面的难度。我们提出了一种时空范围数据融合算法,以及一种基于RANSAC的鲁棒平面检测算法来解决这些问题。此外,我们使用线性参数制定了传感数据的替代几何解释,这对于校准过程是有利的。线性表示允许将所提出的方法推广到遵循旋转光束模型的任何LiDAR系统。我们还在本文中证实,在有效校准数据集的情况下,可以进一步调整预校准的工厂参数以实现显着改善的性能。优化之后,系统误差显着降低,评估表明,重新校准的参数优于出厂参数,RMS平面误差降低了49%。

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