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LARGE-SCALE WATER CLASSIFICATION OF COASTAL AREAS USING AIRBORNE TOPOGRAPHIC LIDAR DATA

机译:使用空机地形激光雷达数据的沿海地区大规模水分类

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Accurate Digital Terrain Models (DTM) are inevitable inputs for mapping areas subject to natural hazards. Topographic lidar scanning has become an established technique to characterize the Earth surface: and reconstruct the topography. For flood hazard modeling in coastal areas, the key step before terrain modeling is the discrimination of land and water surfaces within the delivered point clouds. Therefore, instantaneous shoreline, river borders, inland waters can be extracted as a basis for more reliable DTM generation. This paper presents an automatic, efficient, and versatile workflow for land/water classification of airborne topographic lidar data. For that purpose, a classification framework based on Support Vector Machines (SVM) is designed. First, a set of features, based only 3D lidar point coordinates and flightline information, is defined. Then, the SVM learning step is performed on small but well-targeted areas thanks to an automatic region growing strategy. Finally, label probabilities given by the SVM are merged during a probabilistic relaxation step in order to remove pixel-wise misclassification. Results over two large areas show that survey of millions of points are labelled with high accuracy (>95%) and that small features of interest are still well classified though we work at low point densities (2-3pts/m~2). Finally, our approach provides a strong basis for further discrimination of coastal land-cover classes and habitats.
机译:准确的数字地形模型(DTM)是用于映射到自然危害的地区的不可避免的输入。地形LIDAR扫描已成为表征地面表面的建立技术:并重建地形。对于沿海地区的洪水危险建模,地形建模前的关键步骤是交付点云内的陆地和水面的歧视。因此,瞬间海岸线,河流边界,内陆水域可以提取为更可靠的DTM生成的基础。本文为空中地形激光雷达数据的土地/水分类提供了自动,高效,多功能的工作流程。为此目的,设计了一种基于支持向量机(SVM)的分类框架。首先,定义了一组特征,仅基于3D LIDAR点坐标和飞行指数信息。然后,由于自动区域生长策略,对小但良好的区域进行SVM学习步骤。最后,SVM给出的标签概率在概率放松步骤期间合并,以便去除像素方面的错误分类。结果两个大面积显示,数百万点的调查标有高精度(> 95%),虽然我们在低点密度下工作(2-3pts / m〜2),但感兴趣的小功能仍然很好。最后,我们的方法为进一步歧视沿海陆地覆盖阶层和栖息地提供了强有力的基础。

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