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Data-Driven Approach to Benthic Cover Type Classification Using Bathymetric LiDAR Waveform Analysis

机译:测深LiDAR波形分析的数据驱动底栖类型分类方法

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A data-driven method for describing the benthic cover type based on full-waveform bathymetric LiDAR data analysis is presented. The waveform of the bathymetric LiDAR return pulse is first modeled as a sum of three functions: a Gaussian pulse representing the surface return, a function modeling the backscatter and another Gaussian pulse modeling the return from the bottom surface. Two sets of variables are formed: one containing features describing the bottom return and the other describing various conditions, such as water quality and the depth of the seabed. Regression analysis is used to eliminate the effect of the condition variables on the features, after which the features are mapped onto a cell lattice using a self-organizing map (SOM). The cells of the SOM are grouped into seven clusters using the neighborhood distance matrix method. The clustering result is evaluated using the seabed substrate map based on sonar measurements, as well as delineation of photic zones in the study area. High correspondence between the clusters and the substrate type/photic zone has been obtained indicating that the proposed clustering method adequately describes the benthic cover in the study area. The bottom return pulse waveforms corresponding to the clusters and a cluster map of the study area are also presented. The method can be used for clustering full waveform bathymetric LiDAR data acquired from large areas to discover the structure of benthic cover types and to focus the field studies accordingly.
机译:提出了一种基于全波形测深LiDAR数据分析的底栖盖类型描述数据驱动方法。首先将测深LiDAR返回脉冲的波形建模为三个函数的总和:一个代表表面返回的高斯脉冲,一个模拟反向散射的函数和另一个模拟从底表面返回的高斯脉冲。形成了两组变量:一组变量包含描述底部回流的特征,另一组包含描述各种条件的特征,例如水质和海床深度。回归分析用于消除条件变量对特征的影响,然后使用自组织映射(SOM)将特征映射到单元格上。使用邻域距离矩阵方法将SOM的单元分为七个簇。使用基于声纳测量值的海底底物图以及研究区域的光合带划定来评估聚类结果。已经获得了群集和基底类型/光区之间的高度对应性,表明所提出的群集方法充分描述了研究区域的底栖生物覆盖。还给出了与研究区域的聚类相对应的底部返回脉冲波形和聚类图。该方法可用于对从大面积获取的全波形测深LiDAR数据进行聚类,以发现底栖盖层类型的结构,并据此进行重点研究。

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