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Characterizing forest ecological structure using pulse types and heights of airborne laser scanning

机译:利用脉冲类型和机载激光扫描高度表征森林生态结构

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摘要

Characterizing forest structure is an important part of any comprehensive biodiversity assessment. However, current methods for measuring structural complexity require a laborious process that involves many logistically expensive point based measurements. An automated or semi-automated method would be ideal. In this study, the utility of airborne laser scanning (LiDAR; Light Detection and Ranging) for characterizing the ecological structure of a forest landscape is examined. The innovation of this paper is to use different laser pulse return properties from a full waveform LiDAR to characterize forest ecological structure. First the LiDAR dataset is stratified into four vertical layers: ground, low vegetation (0–1 mfrom the ground), mediumvegetation (1–5m from the ground) and high vegetation (N5 m). Subsequently the “Type” of LiDAR return is analysed: Type 1 (singular returns); Type 2 (first of many returns); Type 3 (intermediate returns); and Type 4 (last of many returns). A forest characterization scheme derived from LiDAR point clouds is proposed. A validation of the schemeis then presented using a network of field sites that recorded commonly used metrics of biodiversity. The proposed forest characterization categories allow for quantification of gaps (above bare ground, low vegetation and medium vegetation), canopy cover and its vertical density as well as the presence of various canopy strata (low, medium and high). Regression analysis showed that LiDAR derived variables were good predictors of field recorded variables (R2=0.82, Pb0.05 between LiDAR derived presence of lowvegetation and field derived LAI for lowvegetation). The proposed scheme clearly shows the potential of fullwaveformLiDAR to provide information on the complexity of habitat structure.
机译:表征森林结构是任何全面的生物多样性评估的重要组成部分。然而,当前的用于测量结构复杂性的方法需要费力的过程,该过程涉及许多逻辑上昂贵的基于点的测量。自动化或半自动化的方法将是理想的。在这项研究中,研究了机载激光扫描(LiDAR;光检测和测距)在表征森林景观生态结构方面的实用性。本文的创新之处在于使用全波形激光雷达的不同激光脉冲返回特性来表征森林生态结构。首先,LiDAR数据集被分为四个垂直层:地面,低植被(距地面0-1 m),中植被(距地面1-5m)和高植被(N5 m)。随后分析LiDAR返回的“类型”:类型1(单个返回);类型2(许多回报中的第一);类型3(中间收益);和类型4(许多回报中的最后一个)。提出了一种基于LiDAR点云的森林表征方案。然后使用实地网络记录该计划的有效性,该网络记录了常用的生物多样性指标。拟议的森林特征分类可以对间隙(裸露地面,低植被和中植被),冠层覆盖及其垂直密度以及各种冠层(低,中和高)的存在进行量化。回归分析表明,LiDAR派生变量是田间记录变量的良好预测指标(R2 = 0.82,LiDAR派生的低植被与田间派生的LAI之间的Pb0.05)。所提出的方案清楚地表明了全波形LiDAR可能提供有关栖息地结构复杂性的信息。

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