首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Comparison of regression and geostatistical methods for mapping Leaf Area Index (LAI) with Landsat ETM+ data over a boreal forest
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Comparison of regression and geostatistical methods for mapping Leaf Area Index (LAI) with Landsat ETM+ data over a boreal forest

机译:回归和地统计学方法在北方森林上用Landsat ETM +数据绘制叶面积指数(LAI)的比较

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This study compared aspatial and spatial methods of using remote sensing and field data to predict maximum growing season leaf area index (LAI) maps in a boreal forest in Manitoba, Canada, The methods tested were orthogonal regression analysis (reduced major axis, RMA) and two geostatistical techniques: kriging with an external drift (KED) and sequential Gaussian conditional simulation (SGCS). Deterministic methods such as RMA and KED provide a single predicted map with either aspatial (e.g., standard error, in regression techniques) or limited spatial (e.g., KED variance) assessments of errors, respectively. In contrast, SGCS takes a probabilistic approach, where simulated values are conditional on the sample values and preserve the sample statistics. In this application, canonical indices were used to maximize the ability of Landsat ETM+ spectral data to account for LAI variability measured in the field through a spatially nested sampling design. As expected based on theory, SGCS did the best job preserving the distribution of measured LAI values. In terms of spatial pattern, SGCS preserved the anisotropy observed in semivariograms of measured LAI, while KED reduced anisotropy and lowered global variance (i.e., lower sill), also consistent with theory. The conditional variance of multiple SGCS realizations provided a useful visual and quantitative measure of spatial uncertainty. For applications requiring spatial prediction methods, we concluded KED is more useful if local accuracy is important, but SGCS is better for indicating global pattern. Predicting LAI from satellite data using geostatistical methods requires a distribution and density of primary, reference LAI measurements that are impractical to obtain. For regional NPP modeling with coarse resolution inputs, the aspatial RMA regression method is the most practical option.
机译:这项研究比较了使用遥感和田间数据的空间和空间方法来预测加拿大曼尼托巴省北方森林的最大生长期叶面积指数(LAI)图,所测试的方法为正交回归分析(减少的主轴,RMA)和两种地统计学技术:带外部漂移的克里格(KED)和顺序高斯条件模拟(SGCS)。确定性方法(例如RMA和KED)提供单个预测图,分别具有误差的无定形(例如,标准误差,采用回归技术)或有限的空间(例如,KED方差)评估。相反,SGCS采用一种概率方法,其中模拟值取决于样本值并保留样本统计信息。在此应用中,规范索引用于最大化Landsat ETM +光谱数据通过空间嵌套采样设计来说明在现场测量的LAI变异性的能力。正如理论所预期的那样,SGCS在保持测得的LAI值的分布方面做得最好。在空间格局方面,SGCS保留了在测量的LAI的半变异函数中观察到的各向异性,而KED降低了各向异性并降低了整体方差(即较低的底槛),这也与理论一致。多个SGCS实现的条件方差为空间不确定性提供了有用的视觉和定量度量。对于需要空间预测方法的应用程序,我们得出结论,如果局部精度很重要,那么KED会更有用,但是SGCS可以更好地指示全局模式。使用地统计方法从卫星数据预测LAI要求获得不可行的主要参考LAI测量值的分布和密度。对于具有粗分辨率输入的区域NPP建模,空间RMA回归方法是最实用的选择。

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