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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Growth-Competition-Based Stem Diameter and Volume Modeling for Tree-Level Forest Inventory Using Airborne LiDAR Data
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Growth-Competition-Based Stem Diameter and Volume Modeling for Tree-Level Forest Inventory Using Airborne LiDAR Data

机译:基于机载LiDAR数据的基于生长竞争的树级森林资源直径和体积模型

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摘要

An individual tree within a forest stand will have its height and diameter growth restricted by the influence of neighboring trees. This is because trees in close proximity compete for resources and space to enable growth. In this paper, the position of trees, tree height (LH), tree crown radius (LCR), and growth competition index (LCI) were extracted from a light-detection-and-ranging (LiDAR)-based rasterized canopy height model using the multilevel morphological active-contour algorithm. The diameter and volume of individual trees are tested and validated to be an exponential function of those LiDAR-derived tree parameters. The best LiDAR-based diameter estimation model and volume estimation model were tested as significant with an $R^{2}$ value of 0.84 and 0.9 and evaluated with an estimation bias of 8.7 cm and 0.91 $ hbox{m}^{3}$, respectively. Results also showed that LH and LCR are positively related to the LiDAR-derived diameter at breast height (DBH) and the LiDAR-derived volume of individual trees in a forest stand, whereas LCI is negatively related. The proposed algorithm of individual tree volume estimation was further applied to predict the volume of three sample plots in mountainous forest stands. It was found that the LVM could be used to predict an acceptable volume estimate of old-aged forest stands. The estimation bias, i.e., percentage RMSE (RMSE%), is averaged at around 4% using the LiDAR metrics $lnhbox{LH}$, LCI, and LCR, whereas the RMSE% increases to 50% if only $lnhbox{LH}$ is applied. Results suggest that LCI is an important regulation factor in the estimation of forest volume stocks using LiDAR remote sensing.
机译:林分中的一棵树的高度和直径会受到相邻树木的影响而受到限制。这是因为紧邻的树木争夺资源和空间以实现增长。本文从基于光探测和测距(LiDAR)的栅格化冠层高度模型中提取了树木的位置,树高(LH),树冠半径(LCR)和生长竞争指数(LCI)。多级形态主动轮廓算法。测试并验证了单个树的直径和体积,这些直径和体积是这些LiDAR衍生树参数的指数函数。测试了基于LiDAR的最佳直径估计模型和体积估计模型,其中$ R ^ {2} $的值分别为0.84和0.9,并且显着性估计为8.7 cm和0.91 $ hbox {m} ^ {3} $。结果还表明,LH和LCR与林高处的LiDAR衍生直径(DBH)和单个树木的LiDAR衍生体积成正相关,而LCI则呈负相关。将提出的个体树体积估计算法进一步应用于预测山地林分三个样地的体积。已经发现,LVM可用于预测可接受的老年林分蓄积量估计。使用LiDAR指标$ lnhbox {LH} $,LCI和LCR,估计偏差(即RMSE(RMSE%)百分比)平均约为4%,而如果仅$ lnhbox {LH},则RMSE%增加到50%应用$。结果表明,LCI是使用LiDAR遥感估算森林蓄积量的重要调控因素。

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