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A new GLM-based method for mapping tree cover continuous fields using regional MODIS reflectance data

机译:一种新的基于GLM的使用区域MODIS反射率数据映射树覆盖连续字段的方法

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Knowledge about land cover and its change is an important input for the monitoring and modeling of ecological and environmental processes from the regional to the global scale. Considerable efforts have been made to develop global continuous fields for different land cover types at large spatial scales based on NOAA-AVHRR and TERRA-MODIS data and a range of techniques have been applied to depict the sub-pixel fraction of land cover types from these data. In this study, a new methodology is described for deriving and optimizing continuous fields of tree cover for complex topography at the regional scale of the European Alps using generalized linear models (GLM). MODIS data (MOD09) at a spatial resolution of 500 m were used to calibrate the models against regional training data of fractional tree cover. For evaluating the method we test the GLM model output to a regression tree model (using the same data structure). Further we test the resulting GLM-based tree cover continuous fields against two different, independent test data sets; one of which is spatially separated and the other is from within the calibration area. Finally, we compare the GLM model output with two available global data sets at spatial resolutions of I km and 3 km: (1) TERRA-MODIS Vegetation Continuous Fields product (MOD44), and (2) the NOAA-AVHRR vegetation continuous fields. Our GLM-based method results in high accuracy. (MAE=9. 1%) and low bias (- 1.2%) across the combined evaluation and calibration area, and with small differences only between the calibration and the spatially separated evaluation area (1.3%). Compared to the regression tree model the results from the GLM model for all analyses are significantly better. Thus we conclude that generalized linear models are appropriate for deriving continuous fields of fractional tree cover for complex topography at the regional scale. GLMs can handle nonlinear relationships present in the training data set well, and the method is robust with respect to sample size and the number of months used for calibration. Regional calibrations of vegetation continuous fields may offer significantly improved predictions compared to globally calibrated models. Such regionally calibrated and optimized models may serve as valuable tools for regional monitoring of land cover pattern and its temporal change. (c) 2005 Elsevier Inc. All rights reserved.
机译:关于土地覆盖及其变化的知识是从区域到全球范围的生态和环境过程的监测和建模的重要输入。基于NOAA-AVHRR和TERRA-MODIS数据,已经做出了巨大的努力来为大空间尺度的不同土地覆盖类型开发全球连续场,并且已经应用​​了一系列技术来描述这些类型的土地覆盖类型的亚像素部分数据。在这项研究中,描述了一种新的方法,该方法使用广义线性模型(GLM)来推导和优化欧洲阿尔卑斯山区域规模的复杂地形的树木覆盖连续区域。使用空间分辨率为500 m的MODIS数据(MOD09)将模型与分数棵树覆盖的区域训练数据进行校准。为了评估该方法,我们将GLM模型的输出测试为回归树模型(使用相同的数据结构)。此外,我们针对两个不同的独立测试数据集测试了基于GLM的树覆盖连续字段。其中一个在空间上分离,另一个在校准区域内。最后,我们将GLM模型输出与两个可用的全球数据集进行了比较,这些数据集的空间分辨率分别为1 km和3 km:(1)TERRA-MODIS植被连续田产品(MOD44),以及(2)NOAA-AVHRR植被连续田。我们基于GLM的方法具有很高的准确性。 (MAE = 9.1%)和较低的偏差(-1.2%),位于组合的评估和校准区域,并且仅在校准和空间上分开的评估区域之间有很小的差异(1.3%)。与回归树模型相比,所有分析的GLM模型结果都明显更好。因此,我们得出结论,广义线性模型适用于在区域尺度上推导分数树覆盖的连续场以用于复杂地形。 GLM可以很好地处理训练数据集中存在的非线性关系,并且该方法在样本量和用于校准的月份数方面非常可靠。与全球校准模型相比,植被连续田地的区域校准可以提供明显改善的预测。这种区域校准和优化的模型可以作为有价值的工具,用于区域监测土地覆盖格局及其时间变化。 (c)2005 Elsevier Inc.保留所有权利。

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