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首页> 外文期刊>Forest Ecology and Management >Modelling tree size diversity from airborne laser scanning using canopy height models with image texture measures
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Modelling tree size diversity from airborne laser scanning using canopy height models with image texture measures

机译:使用具有图像纹理度量的机盖高度模型,通过机载激光扫描对树木大小多样性进行建模

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The aim of this study is to investigate the relationships between the plot-level tree size diversity and variables derived from airborne laser scanning (ALS) data, which is a type of LiDAR measurement. We conducted a study using forest stands with a range of managed and near-natural stands with a broad range of species. 33 Plots that represent the forest stand variety in the study area were sampled; within each plot four biophysical variables were measured by ground-based methods, these were height (TH), diameter at breast height (DBH), crown length (CL), and crown width (CW). The resultant tree size diversity was parameterised as Lmoments (t) statistics and compared with both point-based and grid-based laser scanning diversity variables. Point-based measures included the ratios of the Percentile means (P99/P25, P99/P50, P99/75, and P99/P90), Coefficient of variation, Skewness, Kurtosis, and Lmoments (t). The grid-based texture measures derived from the ALS Canopy Height Models (CHMs) included firstorder texture, Standard Deviation of Grey Levels (SDGL), and three second-order texture measures, including Contrast, Entropy and Correlation. Furthermore, we tested the influence of scale by analysing the effect of grid cell sizes when generating CHMs from the raw point cloud ALS data. Using linear regression analysis, we show that the grid-based texture measures are superior predictors of tree height diversity than the point-based metrics. Sixty percent of the variance in the tree height diversity and 51% of the variance in the DBH Diversity were explained by the SDGL and Correlation texture measures, respectively (p < 0.01). The associations between the texture features and the CL Diversity and CW Diversity were weaker compared to the TH Diversity and DBH Diversity (The highest R2 was 0.46 and 0.45, respectively, p < 0.01). While the CHM calculated from a 3 x 3 m grid cell had the strongest correlation with TH Diversity (0.60, p < 0.01), the CHMs calculated from 1 x 1 m and 2 x 2 m cell size had the strongest association with DBH Diversity (0.51, p <0.01). Combining selected point- and grid-based variables accounted for up to 85% of the variance of tree height diversity, 68% of the variance of DBH Diversity and 52% of the variance of CL Diversity. Our study shows that the combination of laser-based height percentile ratios and texture measures derived from the ALS-CHM can be used to estimate tree size diversity across forest landscapes.
机译:这项研究的目的是调查地块级树大小多样性与从机载激光扫描(ALS)数据(一种LiDAR测量)得出的变量之间的关系。我们使用林分林进行了一项研究,林分林包括一系列管理和近乎自然的林分,种类繁多。对代表研究区域森林林分品种的33个样地进行了采样;在每个图中,通过地面方法测量了四个生物物理变量,分别是身高(TH),胸高直径(DBH),冠长(CL)和冠宽(CW)。将所得的树大小多样性参数化为Lmoments(t)统计数据,并与基于点和基于网格的激光扫描多样性变量进行比较。基于点的度量包括百分位数平均值的比率(P99 / P25,P99 / P50,P99 / 75和P99 / P90),变异系数,偏度,峰度和Lmoments(t)。从ALS机盖高度模型(CHM)派生的基于网格的纹理度量包括一阶纹理,灰度标准偏差(SDGL)和三个二阶纹理度量,包括对比度,熵和相关性。此外,当从原始点云ALS数据生成CHM时,我们通过分析网格单元大小的影响来测试规模的影响。使用线性回归分析,我们证明了基于网格的纹理度量比基于点的度量是更好的树高多样性预测指标。分别通过SDGL和“相关纹理”量度解释了树高多样性的60%的变化和DBH多样性的51%的变化(p <0.01)。与TH多样性和DBH多样性相比,纹理特征与CL多样性和CW多样性之间的关联性较弱(最高R2分别为0.46和0.45,p <0.01)。虽然从3 x 3 m网格单元中计算出的CHM与TH分集之间的相关性最强(0.60,p <0.01),但从1 x 1 m和2 x 2 m单元大小中计算出的CHM与DBH分集的相关性最强( 0.51,p <0.01)。结合选择的基于点和网格的变量最多占树高多样性方差的85%,DBH分集方差的68%和CL分集方差的52%。我们的研究表明,基于激光的高度百分比与从ALS-CHM导出的纹理量度的组合可用于估算森林景观中树木的大小多样性。

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