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Mapping Forest Canopy Height Across Large Areas by Upscaling ALS Estimates with Freely Available Satellite Data

机译:利用免费提供的卫星数据通过提升ALS估计值来绘制大面积森林冠层高度的图

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Operational assessment of forest structure is an on-going challenge for land managers, particularly over large, remote or inaccessible areas. Here, we present an easily adopted method for generating a continuous map of canopy height at a 30 m resolution, demonstrated over 2.9 million hectares of highly heterogeneous forest (canopy height 0–70 m) in Victoria, Australia. A two-stage approach was utilized where Airborne Laser Scanning (ALS) derived canopy height, captured over ~18% of the study area, was used to train a regression tree ensemble method; random forest. Predictor variables, which have a global coverage and are freely available, included Landsat Thematic Mapper (Tasselled Cap transformed), Moderate Resolution Imaging Spectroradiometer Normalized Difference Vegetation Index time series, Shuttle Radar Topography Mission elevation data and other ancillary datasets. Reflectance variables were further processed to extract additional spatial and temporal contextual and textural variables. Modeled canopy height was validated following two approaches; (i) random sample cross validation, and (ii) with 108 inventory plots from outside the ALS capture extent. Both the cross validation and comparison with inventory data indicate canopy height can be estimated with a Root Mean Square Error (RMSE) of ≤ 31% (~5.6 m) at the 95th percentile confidence interval. Subtraction of the systematic component of model error, estimated from training data error residuals, rescaled canopy height values to more accurately represent the response variable distribution tails e.g., tall and short forest. Two further experiments were carried out to test the applicability and scalability of the presented method. Results suggest that (a) no improvement in canopy height estimation is achieved when models were constructed and validated for smaller geographic areas, suggesting there is no upper limit to model scalability; and (b) training data can be captured over a small percentage of the study area (~6%) if response and predictor variable variance is captured within the training cohort, however RMSE is higher than when compared to a stratified random sample.
机译:对森林结构的业务评估是土地经理的一项持续挑战,特别是在大片,偏远或人迹罕至的地区。在这里,我们提出一种易于采用的方法,以30 m的分辨率生成连续的树冠高度图,在澳大利亚维多利亚州,该树证明了超过290万公顷的高度异构森林(树冠高度0–70 m)。采用了两阶段方法,其中机载激光扫描(ALS)得出的机盖高度(捕获了研究区域的约18%)用于训练回归树集成方法。随机森林。预测变量具有全球覆盖范围,可免费获得,包括Landsat专题制图仪(Tasselled Cap转换),中分辨率成像光谱仪,归一化植被指数时间序列,航天飞机雷达地形图任务海拔数据和其他辅助数据集。进一步处理反射率变量,以提取其他时空上下文和纹理变量。可以通过以下两种方法对模型化的树冠高度进行验证: (i)随机样本交叉验证,以及(ii)从ALS捕获范围之外的108个清单小区。交叉验证和与清单数据的比较均表明,在第95个百分位数的置信区间内,可以用≤31%(〜5.6 m)的均方根误差(RMSE)估算冠层高度。从训练数据误差残差,缩放后的树冠高度值中估算出的模型误差的系统成分减去后,可以更准确地表示响应变量分布的尾巴,例如高矮的森林。进行了两个进一步的实验,以测试该方法的适用性和可扩展性。结果表明:(a)当针对较小的地理区域构建模型并对其进行验证时,冠层高度估计没有任何改善,这表明模型可伸缩性没有上限; (b)如果在训练队列中捕获了响应和预测变量变化,则可以在研究区域的一小部分(约6%)中捕获训练数据,但是与分层随机样本相比,RMSE更高。

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