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An automated approach for wood-leaf separation from terrestrial LIDAR point clouds using the density based clustering algorithm DBSCAN

机译:基于密度的聚类算法DBSCAN的陆地激光脉云的木叶分离自动化方法

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摘要

The terrestrial light detection and ranging (LiDAR) technique has been recently used to provide 3D structural information of forest canopy at the individual tree level. However, the operational use of Terrestrial Laser Scanner (TLS) for canopy characterization of broadleaf non-deciduous forests needs further investigations. The estimation of wood volume, above-ground woody biomass, tree canopy characteristics and leaf area index often requires separation of photosynthetically active material and non-photosynthetically active material. This article describes an automated wood-leaves separation method, based on spatial geometric information of TLS point clouds, for broad leaved non-deciduous trees. Scans of seven individuals of Quercus sober L. trees were acquired by using the TLS phase-based Leica HDS6100. Point clouds were partitioned in cubic volumes (voxels) that were used as input to generate clusters through the point density algorithm DBSCAN. The clustering process led to the identification of wood and non-wood voxels. A specific automatic routine was written to process data from the point clouds to the visualization of clustering results. The analysis of results showed good performance for this approach, with the overall accuracy in classifying wood components of trees ranging from 95% to 97%. The largest accuracies were observed for branches larger than 5 cm in diameter whereas the accuracy of classification dropped, as expected, for branches with diameter lower than 3 cm.
机译:最近用于在各个树级提供森林冠层的3D结构信息的地面光检测和测距(LIDAR)技术。然而,用于阔叶非落叶林的冠层概念表征的地面激光扫描仪(TLS)的操作使用需要进一步研究。估计木材体积,地上木质生物质,树冠特性和叶面积指数通常需要分离光合作用材料和非光合活性材料。本文介绍了一种基于TLS点云的空间几何信息的自动化木叶分离方法,用于宽阔的叶片非落叶树。通过使用基于TLS相位的Leica HDS6100来获得七种人的七个人的扫描。点云被用作输入以通过点密度算法DBSCAN生成群集的Cubic Volumes(体素)分区。聚类过程导致木材和非木材体素的识别。将特定的自动例程写入从点云处理数据到群集结果的可视化。结果分析对这种方法表现出良好的性能,具有分类树木组件的整体准确性,从95%到97%。对于直径大于5cm的分支,观察到最大的精度,而分类的精度如预期的那样,对于直径低于3cm的分支。

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