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Method to Reduce the Bias on Digital Terrain Model and Canopy Height Model from LiDAR Data

机译:利用LiDAR数据减少数字地形模型和冠层高度模型偏差的方法

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摘要

Underestimation of LiDAR heights is widely known but has never been evaluated for several sensors and for diverse types of ecological conditions. This underestimation is mainly linked to the probability of the pulse to reach the ground and the top of vegetation. Main causes of this underestimation are pulse density, pattern of scan (sensors), scan angles, specific contract parameters (flying altitude, pulse repetition frequency) and characteristics of the territory (slopes, stand density and species composition). This study, carried out at a resolution of 1 × 1 m, first assessed the possibility of making an adjustment model to correct the bias of the digital terrain model (DTM), and then proposed a global adjustment model to correct the bias on the canopy height model (CHM). For this study, the bias of both DTM and CHM were calculated by subtracting two LiDAR datasets: high-density pixels with 21 pulses/m2 (first return) and more (DTM or CHM reference value pixels) and low-density pixels (DTM or CHM value to correct). After preliminary analyses, it was concluded that the DTM did not need specific adjustment. In contrast, the CHM needed adjustments. Among the variables studied, three were selected for the final CHM adjustment model: the maximum height of the pixel (H2Corr); the density of first returns by m 2 (D_first); and the standard deviation of nine maximum heights of the neighborhood cells (H_STD9). The modeling occurred in three steps. The first two steps enabled the determination of significant variables and the shape of the equation to be defined (linear mixed model and non-linear model). The third step made it possible to propose an empirical equation using a non-linear mixed model that can be applied to a 1 × 1 m CHM. The CHM underestimation correction could be used for a preliminary step to several uses of the CHM such as volume calculation, forest growth models or multi-temporal analysis.
机译:对LiDAR高度的低估是众所周知的,但从未针对几种传感器和各种类型的生态条件进行过评估。这种低估主要与脉冲到达地面和植被顶部的可能性有关。这种低估的主要原因是脉冲密度,扫描模式(传感器),扫描角度,特定的收缩参数(飞行高度,脉冲重复频率)和区域特征(坡度,林分密度和物种组成)。这项研究以1×1 m的分辨率进行,首先评估了建立校正模型以校正数字地形模型(DTM)偏差的可能性,然后提出了一种整体校正模型来校正冠层的偏差。高度模型(CHM)。在本研究中,通过减去两个LiDAR数据集来计算DTM和CHM的偏差:具有21个脉冲/ m2(首次返回)和更高(DTM或CHM参考值像素)的高密度像素和低密度像素(DTM或CHM值进行更正)。经过初步分析,得出的结论是DTM不需要特定的调整。相反,CHM需要调整。在研究的变量中,选择了三个作为最终CHM调整模型:像素的最大高度(H2Corr);初次回报的密度为m 2(D_first);和邻域单元的九个最大高度的标准偏差(H_STD9)。建模分三个步骤进行。前两个步骤可以确定重要变量并定义方程的形状(线性混合模型和非线性模型)。第三步可以使用非线性混合模型提出经验方程,该模型可以应用于1×1 m CHM。 CHM低估校正可用于CHM的多种用途的初步步骤,例如体积计算,森林生长模型或多时相分析。

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