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Mapping Tree Canopy Cover and Aboveground Biomass in Sudano-Sahelian Woodlands Using Landsat 8 and Random Forest

机译:使用Landsat 8和随机森林绘制Sudano-Sahelian林地的树冠覆盖和地上生物量

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Accurate and timely maps of tree cover attributes are important tools for environmental research and natural resource management. We evaluate the utility of Landsat 8 for mapping tree canopy cover (TCC) and aboveground biomass (AGB) in a woodland landscape in Burkina Faso. Field data and WorldView-2 imagery were used to assemble the reference dataset. Spectral, texture, and phenology predictor variables were extracted from Landsat 8 imagery and used as input to Random Forest (RF) models. RF models based on multi-temporal and single date imagery were compared to determine the influence of phenology predictor variables. The effect of reducing the number of predictor variables on the RF predictions was also investigated. The model error was assessed using 10-fold cross validation. The most accurate models were created using multi-temporal imagery and variable selection, for both TCC (five predictor variables) and AGB (four predictor variables). The coefficient of determination of predicted versus observed values was 0.77 for TCC (RMSE = 8.9%) and 0.57 for AGB (RMSE = 17.6 tons∙ha−1). This mapping approach is based on freely available Landsat 8 data and relatively simple analytical methods, and is therefore applicable in woodland areas where sufficient reference data are available.
机译:准确,及时地绘制树木覆盖物属性图是进行环境研究和自然资源管理的重要工具。我们评估了Landsat 8在布基纳法索林地景观中测绘树冠覆盖(TCC)和地上生物量(AGB)的实用性。野外数据和WorldView-2影像用于组装参考数据集。从Landsat 8影像中提取光谱,纹理和物候预测变量,并将其用作随机森林(RF)模型的输入。比较了基于多时相和单日图像的RF模型,以确定物候预测变量的影响。还研究了减少预测变量的数量对RF预测的影响。使用10倍交叉验证评估模型误差。使用多时间图像和变量选择为TCC(五个预测变量)和AGB(四个预测变量)创建了最准确的模型。 TCC的预测值与观测值的确定系数为0.77(RMSE = 8.9%),AGB为0.57(RMSE = 17.6吨∙ha -1 )。这种制图方法基于免费提供的Landsat 8数据和相对简单的分析方法,因此适用于有足够参考数据的林地地区。

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