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Use of WorldView-2 stereo imagery and National Forest Inventory data for wall-to-wall mapping of growing stock

机译:使用WorldView-2立体图像和国家森林清单数据进行种植种群的逐壁制图

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摘要

Angle-count sampling (ACS) is an established method in forest mensuration and is implemented in different National Forest Inventories (NFI). However, due to the lack of fixed reference areas of the inventory plots, these ACS-based field data are seldom used as training data for wall-to-wall mapping applications at forest enterprise level. In this paper, we demonstrate an approach to overcome this shortcoming. For a study area in northern Bavaria, Germany, we used ACS-based NFI data for model training to generate wall-to-wall maps of growing stock for broadleaf, conifer and mixed forest stands. Both spectral and height information from the very high resolution WorldView-2 (WV2) satellite were used as auxiliary information and the non-parametric Random Forests (RF) algorithm was chosen as modeling approach. The growing stock predictions were validated using out-of-bag (OOB) samples and further verified at the plot and stand level using additional data. For validation, field plots from a Management Forest Inventory (MFI) and delineated forest stands were used. Compared to stand-level aggregations based on field plots from the MFI, our approach explained 56% of the variability in the growing stock (R-2) with a relative RMSE of 15% at the stand level (n = 252). As expected, the scatter was higher at the plot-level (n = 3973). Nonetheless, the models still achieved acceptable performance measures (R-2 = 0.44; RMSE = 34%). (C) 2015 Elsevier B.V. All rights reserved.
机译:角度计数采样(ACS)是森林测量中的一种既定方法,已在不同的国家森林清单(NFI)中实施。但是,由于缺少清单的固定参考区域,因此很少将这些基于ACS的现场数据用作森林企业级墙对墙制图应用程序的训练数据。在本文中,我们演示了一种克服这一缺点的方法。对于德国巴伐利亚州北部的研究区,我们使用了基于ACS的NFI数据进行模型训练,以生成阔叶,针叶树和混交林林分生长种群的逐壁地图。来自高分辨率WorldView-2(WV2)卫星的光谱和高度信息均被用作辅助信息,并且选择了非参数随机森林(RF)算法作为建模方法。使用袋装(OOB)样本验证了生长种群的预测,并使用其他数据在样地和林分级别进一步进行了验证。为了进行验证,使用了管理林清单(MFI)和划定的林分的田间样地。与基于MFI实地图的林分级聚合相比,我们的方法解释了生长种群(R-2)的56%变异性,而林分级(n = 252)的相对RMSE为15%。正如预期的那样,散点图级别更高(n = 3973)。尽管如此,这些模型仍达到了可接受的性能指标(R-2 = 0.44; RMSE = 34%)。 (C)2015 Elsevier B.V.保留所有权利。

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