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Prediction of Common Surface Soil Properties Based on Vis-NIR Airborne and Simulated EnMAP Imaging Spectroscopy Data: Prediction Accuracy and Influence of Spatial Resolution

机译:基于Vis-NIR机载和模拟EnMAP成像光谱数据的常见表层土壤性质的预测:预测精度和空间分辨率的影响

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With the upcoming availability of the next generation of high quality orbiting hyperspectral sensors, a major step toward improved regional soil mapping and monitoring and delivery of quantitative soil maps is expected. This study focuses on the determination of the prediction accuracy of spectral models for the mapping of common soil properties based on upcoming EnMAP (Environmental Mapping and Analysis Program) satellite data using semi-operational soil models. Iron oxide (Fe d ), clay, and soil organic carbon (SOC) content are predicted in test areas in Spain and Luxembourg based on a semi-automatic Partial-Least-Square (PLS) regression approach using airborne hyperspectral, simulated EnMAP, and soil chemical datasets. A variance contribution analysis, accounting for errors in the dependent variables, is used alongside classical error measurements. Results show that EnMAP allows predicting iron oxide, clay, and SOC with an R 2 between 0.53 and 0.67 compared to Hyperspectral Mapper (HyMap)/Airborne Hyperspectral System (AHS) imagery with an R 2 between 0.64 and 0.74. Although a slight decrease in soil prediction accuracy is observed at the spaceborne scale compared to the airborne scale, the decrease in accuracy is still reasonable. Furthermore, spatial distribution is coherent between the HyMap/AHS mapping and simulated EnMAP mapping as shown with a spatial structure analysis with a systematically lower semivariance at the EnMAP scale.
机译:随着下一代高质量轨道高光谱传感器的问世,预计将朝着改进区域土壤测绘以及监测和提供定量土壤图迈出重要一步。这项研究着眼于基于即将到来的EnMAP(环境制图和分析计划)卫星数据,使用半操作性土壤模型确定光谱模型对常见土壤特性的预测准确性的确定。基于半自动的偏最小二乘(PLS)回归方法,使用机载高光谱,模拟的EnMAP和ESP预测西班牙和卢森堡的测试区域中的氧化铁(Fe d),粘土和土壤有机碳(SOC)含量。土壤化学数据集。将方差贡献分析(考虑了因变量中的误差)与经典误差测量一起使用。结果表明,与R 2在0.64至0.74之间的高光谱映射器(HyMap)/机载高光谱系统(AHS)图像相比,EnMAP可以预测R 2在0.53至0.67之间的氧化铁,粘土和SOC。尽管与空降尺度相比,在星空尺度上观察到土壤预测精度略有下降,但精度下降仍然是合理的。此外,HyMap / AHS映射和模拟的EnMAP映射之间的空间分布是连贯的,如空间结构分析所显示的那样,EnMAP尺度上的系统方差较低。

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