基于运动激光雷达的多传感器系统不确定性建模的蒙特卡罗方差传播

IF 1.2 Q4 REMOTE SENSING
Dominik Ernst, S. Vogel, H. Alkhatib, I. Neumann
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引用次数: 0

摘要

摘要运动多传感器系统(MSS)广泛用于各种应用,如移动地图或自主系统。根据应用的不同,对系统的了解不足,比如对校准准确性的错误假设,可能会导致地图绘制任务不准确,或者在自动驾驶的情况下可能会危及人类。不确定性建模可以帮助获得关于系统捕获的数据的知识。通常,MSSs的不确定性估计是根据与参考数据集的比较进行反向建模的。本文选择了一种基于激光雷达的运动学MSS不确定性建模的正向建模方法来估计获取的点云的不确定性。MSS由一个徕卡绝对跟踪器和一个带有6-DoF传感器和Velodyne VLP-16激光雷达的平台组成。多次校准的结果被用作点不确定性的蒙特卡罗(MC)方差传播的不确定性信息的来源。通过使用MC样本的集合参考过程,可以降低所获取的点云与地面实况相比的偏差。此外,点云的预测不确定性很好地代表了更接近系统的参考面板的实际偏差。较远的面板表示剩余的距离取决于效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monte Carlo variance propagation for the uncertainty modeling of a kinematic LiDAR-based multi-sensor system
Abstract Kinematic multi-sensor systems (MSS) are widely used for various applications, like mobile mapping or for autonomous systems. Depending on the application, insufficient knowledge of a system, like wrong assumptions about the accuracy of calibrations, might lead to inaccurate maps for mapping tasks or it might endanger humans in the context of autonomous driving. Uncertainty modeling can help to gain knowledge about the data captured by a system. Usually, uncertainty estimations for MSSs are done as backward modeling based on a comparison to reference datasets. In this paper, a forward modeling approach for the uncertainty modeling of a LiDAR-based kinematic MSS is chosen to estimate the uncertainty of an acquired point cloud. The MSS consists of a Leica Absolute Tracker and a platform with a 6-DoF sensor and Velodyne VLP-16 LiDAR. Results of multiple calibrations are used as the source for the uncertainty information for a Monte Carlo (MC) variance propagation of the point uncertainties. The deviations of the acquired point clouds in comparison to a ground truth can be decreased by an ensemble referencing process using the MC samples. Furthermore, the predicted uncertainties for the point clouds are well representing the actual deviations for reference panels closer to the system. Panels farther away indicate remaining distance depending effects.
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来源期刊
Journal of Applied Geodesy
Journal of Applied Geodesy REMOTE SENSING-
CiteScore
2.30
自引率
7.10%
发文量
30
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