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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Significant effect of topographic normalization of airborne LiDAR data on the retrieval of plant area index profile in mountainous forests
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Significant effect of topographic normalization of airborne LiDAR data on the retrieval of plant area index profile in mountainous forests

机译:机载LiDAR数据的地形归一化对山区森林植物面积指数分布的检索的重要作用

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As an important metric for describing vertical forest structure, the plant area index (PAI) profile is used for many applications including biomass estimation and wildlife habitat assessment. PAI profiles can be estimated with the vertically resolved gap fraction from airborne LiDAR data. Most research utilizes a height normalization algorithm to retrieve local or relative height by assuming the terrain to be flat. However, for many forests this assumption is not valid. In this research, the effect of topographic normalization of airborne LiDAR data on the retrieval of PAI profile was studied in a mountainous forest area in Germany. Results show that, although individual tree height may be retained after topographic normalization, the spatial arrangement of trees is changed. Specifically, topographic normalization vertically condenses and distorts the PAI profile, which consequently alters the distribution pattern of plant area density in space. This effect becomes more evident as the slope increases. Furthermore, topographic normalization may also undermine the complexity (i.e., canopy layer number and entropy) of the PAI profile. The decrease in PAI profile complexity is not solely determined by local topography, but is determined by the interaction between local topography and the spatial distribution of each tree. This research demonstrates that when calculating the PAI profile from airborne LiDAR data, local topography needs to be taken into account. We therefore suggest that for ecological applications, such as vertical forest structure analysis and modeling of biodiversity, topographic normalization should not be applied in non-flat areas when using LiDAR data. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:作为描述垂直森林结构的重要指标,植物面积指数(PAI)概况可用于许多应用,包括生物量估算和野生动植物栖息地评估。可以使用机载LiDAR数据中的垂直分辨间隙分数估算PAI轮廓。大多数研究利用高度归一化算法通过假设地形平坦来检索局部或相对高度。但是,对于许多森林来说,这种假设是无效的。在这项研究中,研究了德国山区森林地区机载LiDAR数据的地形归一化对PAI轮廓检索的影响。结果表明,尽管在地形归一化后可以保留单个树的高度,但树木的空间布置却发生了变化。具体而言,地形归一化在垂直方向上使PAI轮廓缩合和扭曲,从而改变了空间中植物区域密度的分布方式。随着斜率的增加,这种影响变得更加明显。此外,地形归一化还可能破坏PAI分布图的复杂性(即,冠层数和熵)。 PAI轮廓复杂度的降低不仅由局部地形决定,而且由局部地形和每棵树的空间分布之间的相互作用决定。这项研究表明,从机载LiDAR数据计算PAI轮廓时,需要考虑局部地形。因此,我们建议,对于生态应用,例如垂直森林结构分析和生物多样性建模,使用LiDAR数据时,不应在非平坦地区应用地形归一化。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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