Extraction of Arbors from Terrestrial Laser Scanning Data Based on Trunk Axis Fitting

Forests Pub Date : 2024-07-13 DOI:10.3390/f15071217
Song Liu, Yuncheng Deng, Jianpeng Zhang, Jinliang Wang, Di Duan
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Abstract

Accurate arbor extraction is an important element of forest surveys. However, the presence of shrubs can interfere with the extraction of arbors. Addressing the issues of low accuracy and weak generalizability in existing Terrestrial Laser Scanning (TLS) arbor point clouds extraction methods, this study proposes a trunk axis fitting (TAF) method for arbor extraction. After separating the point cloud data by upper and lower, slicing, clustering, fitting circles, obtaining the main central axis, filtering by distance, etc. The canopy point clouds are merged with the extracted trunk point clouds to precisely separate arbors and shrubs. The advantage of the TAF method proposed in this study is that it is not affected by point cloud density or the degree of trunk curvature. This study focuses on a natural forest plot in Shangri-La City, Yunnan Province, and a plantation plot in Kunming City, using manually extracted data from a standardized dataset of samples to test the accuracy of the TAF method and validate the feasibility of the proposed method. The results showed that the TAF method proposed in this study has high extraction accuracy. It can effectively avoid the problem of trunk point cloud loss caused by tree growth curvature. The experimental accuracy for both plots reached over 99%. This study can provide certain technical support for arbor parameter extraction and scientific guidance for forest resource investigation and forest management decision-making.
基于主干轴拟合从地面激光扫描数据中提取芯轴
准确提取乔木是森林调查的一项重要内容。然而,灌木的存在会干扰乔木的提取。针对现有的地面激光扫描(TLS)树干点云提取方法精度低、通用性差的问题,本研究提出了一种树干轴拟合(TAF)方法来提取树干。在对点云数据进行上下分离、切片、聚类、拟合圆、获取主中轴、距离过滤等处理后。树冠点云与提取的树干点云合并,从而精确地分离出乔木和灌木。本研究提出的 TAF 方法的优点是不受点云密度或树干弯曲程度的影响。本研究以云南省香格里拉市的一个天然林地块和昆明市的一个人工林地块为研究对象,使用从标准化样本数据集中人工提取的数据来测试 TAF 方法的准确性,并验证所提方法的可行性。结果表明,本研究提出的 TAF 方法具有较高的提取精度。它能有效避免树木生长弯曲造成的树干点云丢失问题。两个地块的实验精度均达到 99% 以上。本研究可为乔木参数提取提供一定的技术支持,为森林资源调查和森林经营决策提供科学指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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