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New Automated Point-Cloud Alignment for Ground-Based Light Detection and Ranging Data of Long Coastal Sections

机译:新型自动点云对准技术,用于长海岸段的地面光检测和测距数据

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摘要

This paper presents new techniques with corresponding algorithms to automate three-dimensional point-cloud georeferencing for large-scale data sets collected in dynamic environments where typical controls cannot be efficiently employed. Beam distortion occurs at the scan window edges of long-range scans on near-linear surfaces from oblique laser reflections. Coregistration of adjacent scans relies on these overlapping edges, so alignment errors quickly propagate through the data set unless constraints (origin and leveling information) are incorporated throughout the alignment process. This new methodology implements these constraints with a multineighbor least-squares approach to simultaneously improve alignment accuracy between adjacent scans in a survey and between time-series surveys, which need to be aligned separately for quantitative change analysis. A 1.4-km test survey was aligned without the aforementioned constraints using global alignment techniques, and the modified scan origins showed poor agreement (up to 8 m) with measured real-time kinematic global positioning system values. Further, the effectiveness of the constrained multineighbor alignments to minimize error propagation was evidenced by a lower average, range, and standard deviation of RMS values compared with various single neighbor techniques.
机译:本文提出了具有相应算法的新技术,该算法可为无法有效采用典型控件的动态环境中收集的大规模数据集实现三维点云地理参考自动化。光束变形发生在倾斜扫描产生的近线性表面上的远程扫描的扫描窗口边缘处。相邻扫描的一致性取决于这些重叠的边缘,因此,除非在整个对齐过程中合并了约束(原点和水平信息),否则对齐错误会迅速在数据集中传播。这种新方法通过多邻域最小二乘方法实现了这些约束,以同时提高调查中相邻扫描之间以及时间序列调查之间的对齐精度,需要分别进行对齐以进行定量变化分析。使用全局对准技术,在没有上述约束的情况下对一个1.4公里的测试测量进行了对准,并且修改后的扫描起点显示与实时运动学全球定位系统值之间的一致性差(最多8 m)。此外,与各种单邻居技术相比,RMS值的平均值,范围和标准偏差更低,证明了受约束的多邻居比对将错误传播最小化的有效性。

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