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Lidar remote sensing of forest biomass: A scale-invariant estimation approach using airborne lasers

机译:激光雷达对森林生物量的遥感:使用机载激光的尺度不变估计方法

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Researchers in lidar (Light Detection And Ranging) strive to search for the most appropriate laser-based metrics as predictors in regression models for estimating forest structural variables. Many previously developed models are scale-dependent that need to be fitted and then applied both at the same scale or pixel size. The objective of this paper is to develop methods for scale-invariant estimation of forest biomass using lidar data. We proposed two scale-invariant models for biomass: a linear functional model and an equivalent nonlinear model that use lidar-derived canopy height distributions (CHD) and canopy height quantile functions (CHQ) as predictors, respectively. The two models are called functional regression models because the predictors CHD and CHQ are themselves functions or functional data. The model formulation was justified mathematically under moderate assumptions. We also created a fine-resolution biomass map by mapping individual tree component biomass in a temperate forest of eastern Texas with a lidar tree-delineation approach. The map was used as reference data to synthesize training and test datasets at multiple scales for validating the two scale-invariant models. Results suggest that the models can accurately predict biomass and yield consistent predictive performances across a variety of scales with an R-2 ranging from 0.80 to 0.95 (RMSE: from 14.3 Mg/ha to 33.7 Mg/ha) among all the fitted models. Results also show that a training data size of around 50 plots or less was enough to guarantee a good fitting of the linear functional model. Our findings demonstrate the effectiveness of CHD and CHQ as lidar metrics for estimating biomass as well as the capability of lidar for mapping biomass at a range of scales. The functional regression models of this study are useful for lidar-based forest inventory tasks where the analysis units vary in size and shape. They also hold promise for estimating other forest characteristics such as below-ground biomass, timber volume, crown fuel weight, and Leaf Area Index.
机译:激光雷达(光探测和测距)的研究人员努力寻找最合适的基于激光的度量,将其作为回归模型的预测变量,以估计森林的结构变量。许多以前开发的模型都是与比例相关的,因此需要进行装配,然后以相同的比例或像素大小进行应用。本文的目的是开发使用激光雷达数据对森林生物量进行尺度不变估计的方法。我们提出了两个生物量的尺度不变模型:一个线性功能模型和一个等效非线性模型,分别使用激光雷达衍生的冠层高度分布(CHD)和冠层高度分位数函数(CHQ)作为预测因子。这两个模型称为功能回归模型,因为预测变量CHD和CHQ本身就是函数或功能数据。在中等假设下,数学上证明了模型的合理性。我们还通过使用激光雷达树描绘方法绘制了德克萨斯州东部温带森林中单个树成分生物量的地图,从而创建了高分辨率的生物量图。该图用作参考数据,以多尺度综合训练和测试数据集,以验证两个尺度不变模型。结果表明,在所有拟合模型中,该模型可以准确预测生物量并在各种规模上产生一致的预测性能,R-2的范围为0.80至0.95(RMSE:从14.3 Mg / ha至33.7 Mg / ha)。结果还表明,训练数据大小在50个图以内或更少,足以保证线性函数模型的良好拟合。我们的发现证明了CHD和CHQ作为激光雷达指标来估算生物量的有效性,以及激光雷达在一定范围内绘制生物量的能力。这项研究的功能回归模型可用于基于激光雷达的森林清查任务,其中分析单位的大小和形状各不相同。他们还有望估计其他森林特征,例如地下生物量,木材量,树冠燃料重量和叶面积指数。

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