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Accuracy Assessment of Deep Learning Based Classification of LiDAR and UAV Points Clouds for DTM Creation and Flood Risk Mapping

机译:基于深度学习的LIDAR和UAV点云分类的准确性评估,为DTM创建和洪水风险映射

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摘要

Digital elevation model (DEM) has been frequently used for the reduction and management of flood risk. Various classification methods have been developed to extract DEM from point clouds. However, the accuracy and computational efficiency need to be improved. The objectives of this study were as follows: (1) to determine the suitability of a new method to produce DEM from unmanned aerial vehicle (UAV) and light detection and ranging (LiDAR) data, using a raw point cloud classification and ground point filtering based on deep learning and neural networks (NN); (2) to test the convenience of rebalancing datasets for point cloud classification; (3) to evaluate the effect of the land cover class on the algorithm performance and the elevation accuracy; and (4) to assess the usability of the LiDAR and UAV structure from motion (SfM) DEM in flood risk mapping. In this paper, a new method of raw point cloud classification and ground point filtering based on deep learning using NN is proposed and tested on LiDAR and UAV data. The NN was trained on approximately 6 million points from which local and global geometric features and intensity data were extracted. Pixel-by-pixel accuracy assessment and visual inspection confirmed that filtering point clouds based on deep learning using NN is an appropriate technique for ground classification and producing DEM, as for the test and validation areas, both ground and non-ground classes achieved high recall (>0.70) and high precision values (>0.85), which showed that the two classes were well handled by the model. The type of method used for balancing the original dataset did not have a significant influence in the algorithm accuracy, and it was suggested not to use any of them unless the distribution of the generated and real data set will remain the same. Furthermore, the comparisons between true data and LiDAR and a UAV structure from motion (UAV SfM) point clouds were analyzed, as well as the derived DEM. The root mean square error (RMSE) and the mean average error (MAE) of the DEM were 0.25 m and 0.05 m, respectively, for LiDAR data, and 0.59 m and −0.28 m, respectively, for UAV data. For all land cover classes, the UAV DEM overestimated the elevation, whereas the LIDAR DEM underestimated it. The accuracy was not significantly different in the LiDAR DEM for the different vegetation classes, while for the UAV DEM, the RMSE increased with the height of the vegetation class. The comparison of the inundation areas derived from true LiDAR and UAV data for different water levels showed that in all cases, the largest differences were obtained for the lowest water level tested, while they performed best for very high water levels. Overall, the approach presented in this work produced DEM from LiDAR and UAV data with the required accuracy for flood mapping according to European Flood Directive standards. Although LiDAR is the recommended technology for point cloud acquisition, a suitable alternative is also UAV SfM in hilly areas.
机译:数字海拔模型(DEM)经常用于减少和管理洪水风险。已经开发了各种分类方法来从点云中提取DEM。但是,需要提高准确性和计算效率。本研究的目的如下:(1)确定使用Raw Point云分类和接地点滤波来从无人驾驶飞行器(UAV)和光检测和测距(LIDAR)数据中生产DEM的适用性。基于深度学习和神经网络(NN); (2)以测试点云分类的重新平衡数据集的便利; (3)评估土地覆盖类对算法性能和高程精度的影响; (4)评估LIDAR和UAV结构在洪水风险映射中的运动(SFM)DEM的可用性。本文提出了一种基于NN的深度学习的原始点云分类和接地点滤波的新方法,并在LIDAR和UAV数据上测试。 NN接受了大约600万分的培训,从中提取了本地和全局几何特征和强度数据。逐像素精度评估和视觉检查证实,基于NN的深度学习的过滤点云是一个适当的地面分类和生产DEM的技术,如测试和验证领域,占地面积和非地面课程都实现了高召回(> 0.70)和高精度值(> 0.85),显示两种类由模型处理得很好。用于平衡原始数据集的方法的类型在算法精度下没有显着影响,并且建议不要使用任何一个,除非生成和实际数据集的分布保持相同。此外,分析了真实数据和LIDAR与来自运动(UAV SFM)点云的UAV结构之间的比较,以及派生的DEM。 DEM的根均方误差(RMSE)和平均平均误差分别为LIDAR数据分别为0.25米和0.05米,分别用于UAV数据,分别为0.59 m和-0.28 m。对于所有土地覆盖类别,UAV DEM高估了高度,而LIDAR DEM低估了它。在不同植被类的LIDAR DEM中的准确性没有显着差异,而对于UAV DEM,RMSE随着植被类的高度而增加。源自真正的LIDAR和UAV数据的淹没区域的比较显示,在所有情况下,在测试最低的水位中获得最大差异,而它们最适合高水位。总体而言,根据欧洲洪水指令标准,本工作中提出的方法从LIDAR和UAV数据产生了洪水映射所需的准确性。虽然LIDAR是点云采集的推荐技术,但合适的替代方案也是丘陵地区的UAV SFM。

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