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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:半自动提取莲花茎从热带雨林的地面激光乐队云云

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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:藤星是热带森林的关键结构元素,通过降低树木生长和增加树死亡率,对全球碳循环产生了很大影响。尽管报告了遍布新教徒的藤雪杉的增加,但很少有研究已经试图量化莲花对树木结构的影响。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。然而,要学习Lianas的TLS技术的摄取并没有与树木一样的速度保持同样的速度。 TLS学习Lianas的较慢的技术采用是由于缺乏研究这些复杂生长形式的方法。在这项研究中,我们提出了一种半自动方法,可以从热带雨林的绘图级TLS数据中提取Liana木质组件。我们在两块不同热带雨林地点(Gigante Peninsula,巴拿马和六个在Nouragues,法国圭亚那)的八个地块中测试了该方法,沿着莲花灭绝的渐变(从Liana密度低的地块,带有非常高的Liana密度的地块) 。我们的方法采用基于随机林(RF)算法的机器学习模型。 RF算法在多个空间尺度的3D中从3D中提取的eIGEN特征训练。基于RF的Liana干萃取方法成功提取了我们的数据集中平均58%的Liana Woody Points,高精度为88%。我们还提出了简单的后处理步骤,提高了提取的Liana茎的百分比从54%到90%的营养量和牙龈半岛的65%至70%,而不会损害精度。我们将整个处理管道提供为开源Python包。我们的方法将促进新的研究才能研究莲花,因为它能够监测森林地块中的Liana丰富,生长和生物量。此外,该方法有助于更容易地处理3D数据,以研究来自莲花侵染森林的树结构。

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