首页> 外文期刊>New Zealand Journal of Forestry Science >Regression kriging to improve basal area and growing stock volume estimation based on remotely sensed data, terrain indices and forest inventory of black pine forests
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Regression kriging to improve basal area and growing stock volume estimation based on remotely sensed data, terrain indices and forest inventory of black pine forests

机译:回归克里格改善基于远程感测的数据,地形指数和黑松林森林森林库存的基础区域和生长股票体积估计

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Background: The use of satellite imagery to quantify forest metrics has become popular because of the high costs associated with the collection of data in the field.Methods: Multiple linear regression (MLR) and regression kriging (RK) techniques were used for the spatial interpolation of basal area (G) and growing stock volume (GSV) based on Landsat 8 and Sentinel-2. The performance of the models was tested using the repeated k-fold cross-validation method.Results: The prediction accuracy of G and GSV was strongly related to forest vegetation structure and spatial dependency. The nugget value of semivariograms suggested a moderately spatial dependence for both variables (nugget/sill ratio approx. 70%). Landsat 8 and Sentinel-2 based RK explained approximately 52% of the total variance in G and GSV. Root-mean-square errors were 7.84 m2 ha-1 and 49.68 m3 ha-1 for G and GSV, respectively.Conclusions: The diversity of stand structure particularly at the poorer sites was considered the principal factor decreasing the prediction quality of G and GSV by RK.
机译:背景:使用卫星图像来量化森林度量,由于与现场数据集合相关的高成本。方法:使用多元线性回归(MLR)和回归克里格(RK)技术用于空间插值基于Landsat 8和Sentinel-2的基础区域(g)和生长股票体积(GSV)。使用重复的k折交叉验证方法测试模型的性能。结果:G和GSV的预测精度与森林植被结构和空间依赖性密切相关。半变异函数的核算值建议对两个变量(块/刀架比约约70%)的中等空间依赖。 Landsat 8和Sentinel-2的RK解释了G和GSV总方差的约52%。 G和GSV分别为7.84m 2 HA-1和49.68m3 HA-1。结论:特别是在较较较较较较贫众区的立场结构的多样性被认为是降低G和GSV的预测质量的主要因素通过rk。

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