首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Semi-automatic extraction of liana stems from terrestrial LiDAR point clouds of tropical rainforests
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Semi-automatic extraction of liana stems from terrestrial LiDAR point clouds of tropical rainforests

机译:从热带雨林的地面LiDAR点云中提取藤本植物茎的半自动

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摘要

Lianas are key structural elements of tropical forests having a large impact on the global carbon cycle by reducing tree growth and increasing tree mortality. Despite the reported increasing abundance of lianas across neotropics, very few studies have attempted to quantify the impact of lianas on tree and forest structure. Recent advances in high resolution terrestrial laser scanning (TLS) systems have enabled us to quantify the forest structure, in an unprecedented detail. However, the uptake of TLS technology to study lianas has not kept up with the same pace as it has for trees. The slower technological adoption of TLS to study lianas is due to the lack of methods to study these complex growth forms. In this study, we present a semi-automatic method to extract liana woody components from plot-level TLS data of a tropical rainforest. We tested the method in eight plots from two different tropical rainforest sites (two in Gigante Peninsula, Panama and six in Nouragues, French Guiana) along an increasing gradient of liana infestation (from plots with low liana density to plots with very high liana density). Our method uses a machine learning model based on the Random Forest (RF) algorithm. The RF algorithm is trained on the eigen features extracted from the points in 3D at multiple spatial scales. The RF based liana stem extraction method successfully extracts on average 58% of liana woody points in our dataset with a high precision of 88%. We also present simple post-processing steps that increase the percentage of extracted liana stems from 54% to 90% in Nouragues and 65% to 70% in Gigante Peninsula without compromising on the precision. We provide the entire processing pipeline as an open source python package. Our method will facilitate new research to study lianas as it enables the monitoring of liana abundance, growth and biomass in forest plots. In addition, the method facilitates the easier processing of 3D data to study tree structure from a liana-infested forest.
机译:藤本植物是热带森林的关键结构元素,可通过减少树木生长和增加树木死亡率对全球碳循环产生重大影响。尽管有报道称整个新热带地区藤本植物数量不断增加,但很少有研究试图量化藤本植物对树木和森林结构的影响。高分辨率陆地激光扫描(TLS)系统的最新进展使我们能够以前所未有的细节量化森林结构。但是,TLS技术用于研究藤本植物的步伐并没有跟树木一样快。 TLS研究藤本植物的技术采用速度较慢是由于缺乏研究这些复杂生长形式的方法。在这项研究中,我们提出了一种从热带雨林的地块级TLS数据中提取藤本木质成分的半自动方法。我们在两个不同的热带雨林站点(巴拿马的吉甘特半岛的两个站点和法属圭亚那的努拉格斯的八个站点)的八个样地中,随着藤本植物侵扰的增加梯度(从低的藤本植物密度的地块到非常高的藤本植物密度的地块),对该方法进行了测试。 。我们的方法使用基于随机森林(RF)算法的机器学习模型。在从多个空间尺度的3D点中提取的特征特征上训练RF算法。基于RF的藤本植物茎提取方法成功地提取了我们数据集中平均58%的藤本植物木质点,准确度高达88%。我们还提供了简单的后处理步骤,在不影响精度的前提下,将提取的藤本植物茎的百分比从Nouragues的54%提高到90%,将Gigante半岛的65%提高到70%。我们将整个处理流程作为开源python包提供。我们的方法将促进对藤本植物的研究,因为它可以监测林地中藤本植物的丰度,生长和生物量。此外,该方法有助于更轻松地处理3D数据,以研究来自藤本植物侵染森林的树木结构。

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