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Neural networks for the generation of sea bed models using airborne lidar bathymetry data

机译:使用机载激光雷达测深数据生成海床模型的神经网络

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摘要

Various sectors of the economy such as transport and renewable energy have shown great interest in sea bed models. The required measurements are usually carried out by ship-based echo sounding, but this method is quite expensive. A relatively new alternative is data obtained by airborne lidar bathymetry. This study investigates the accuracy of these data, which was obtained in the context of the project ‘Investigation on the use of airborne laser bathymetry in hydrographic surveying’. A comparison to multi-beam echo sounding data shows only small differences in the depths values of the data sets. The IHO requirements of the total horizontal and vertical uncertainty for laser data are met. The second goal of this paper is to compare three spatial interpolation methods, namely Inverse Distance Weighting (IDW), Delaunay Triangulation (TIN), and supervised Artificial Neural Networks (ANN), for the generation of sea bed models. The focus of our investigation is on the amount of required sampling points. This is analyzed by manually reducing the data sets. We found that the three techniques have a similar performance almost independently of the amount of sampling data in our test area. However, ANN are more stable when using a very small subset of points.
机译:运输和可再生能源等经济的各个部门都对海床模型表现出极大的兴趣。所需的测量通常通过基于舰船的回波探测来进行,但是这种方法非常昂贵。相对较新的替代方法是通过机载激光雷达测深法获得的数据。这项研究调查了这些数据的准确性,这些数据是在“关于在水文测量中使用机载激光测深仪的调查”项目的背景下获得的。与多波束回声测深数据的比较显示,数据集的深度值只有很小的差异。满足了IHO对激光数据的总水平和垂直不确定度的要求。本文的第二个目标是比较三种空间插值方法,即反距离权重(IDW),Delaunay三角剖分(TIN)和监督人工神经网络(ANN),以生成海床模型。我们调查的重点是所需采样点的数量。通过手动减少数据集来进行分析。我们发现,这三种技术的性能几乎与测试区域中的采样数据量无关。但是,当使用很小的点子集时,ANN会更稳定。

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