Institute of Photogrammetry and Remote Sensing, Technische Universität Dresden, Dresden, Germany.
Institute of General Ecology and Environmental Protection, Technische Universität Dresden, Tharandt, Germany.
Ann Bot. 2021 Oct 27;128(6):787-804. doi: 10.1093/aob/mcab087.
In addition to terrestrial laser scanning (TLS), mobile laser scanning (MLS) is increasingly arousing interest as a technique which provides valuable 3-D data for various applications in forest research. Using mobile platforms, the 3-D recording of large forest areas is carried out within a short space of time. Vegetation structure is described by millions of 3-D points which show an accuracy in the millimetre range and offer a powerful basis for automated vegetation modelling. The successful extraction of single trees from the point cloud is essential for further evaluations and modelling at the individual-tree level, such as volume determination, quantitative structure modelling or local neighbourhood analyses. However, high-precision automated tree segmentation is challenging, and has so far mostly been performed using elaborate interactive segmentation methods.
Here, we present a novel segmentation algorithm to automatically segment trees in MLS point clouds, applying distance adaptivity as a function of trajectory. In addition, tree parameters are determined simultaneously. In our validation study, we used a total of 825 trees from ten sample plots to compare the data of trees segmented from MLS data with manual inventory parameters and parameters derived from semi-automatic TLS segmentation.
The tree detection rate reached 96 % on average for trees with distances up to 45 m from the trajectory. Trees were almost completely segmented up to a distance of about 30 m from the MLS trajectory. The accuracy of tree parameters was similar for MLS-segmented and TLS-segmented trees.
Besides plot characteristics, the detection rate of trees in MLS data strongly depends on the distance to the travelled track. The algorithm presented here facilitates the acquisition of important tree parameters from MLS data, as an area-wide automated derivation can be accomplished in a very short time.
除了地面激光扫描(TLS)外,移动激光扫描(MLS)作为一种为森林研究的各种应用提供有价值的 3D 数据的技术,越来越受到关注。使用移动平台,可以在短时间内对大面积的森林进行 3D 记录。植被结构由数百万个 3D 点描述,这些点的精度在毫米范围内,为自动植被建模提供了有力的基础。从点云中成功提取单棵树对于进一步在单棵树水平上进行评估和建模至关重要,例如体积确定、定量结构建模或局部邻域分析。然而,高精度的自动树木分割具有挑战性,到目前为止,它主要是使用复杂的交互式分割方法来完成的。
在这里,我们提出了一种新的分割算法,用于自动分割 MLS 点云中的树木,该算法将距离适应性作为轨迹的函数。此外,同时确定树木参数。在我们的验证研究中,我们总共使用了十个样本点中的 825 棵树,将从 MLS 数据中分割出的树木的数据与手动清查参数和半自动 TLS 分割得出的参数进行比较。
对于距离轨迹 45 米以内的树木,树木的检测率平均达到 96%。树木几乎可以完全分割到距离 MLS 轨迹约 30 米的距离。MLS 分割和 TLS 分割树木的参数精度相似。
除了样地特征外,MLS 数据中树木的检测率还强烈依赖于与行驶轨迹的距离。本文提出的算法有利于从 MLS 数据中获取重要的树木参数,因为可以在很短的时间内完成大面积的自动提取。