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Use of Airborne Hyperspectral Imagery to Map Soil Properties in Tilled Agricultural Fields

机译:利用机载高光谱影像绘制耕作农田中的土壤特性

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Soil hyperspectral reflectance imagery was obtained for six tilled (soil) agricultural fields using an airborne imaging spectrometer (400–2450 nm,~10 nm resolution, 2.5 m spatial resolution). Surface soil samples (n=315) were analyzed for carbon content, particle size distribution, and 15 agronomically important elements (Mehlich-III extraction). When partial least squares (PLS) regression of imagery-derived reflectance spectra was used to predict analyte concentrations, 13 of the 19 analytes were predicted withR2>0.50, including carbon (0.65), aluminum (0.76), iron (0.75), and silt content (0.79). Comparison of 15 spectral math preprocessing treatments showed that a simple first derivative worked well for nearly all analytes. The resulting PLS factors were exported as a vector of coefficients and used to calculate predicted maps of soil properties for each field. Image smoothing with a3×3low-pass filter prior to spectral data extraction improved prediction accuracy. The resulting raster maps showed variation associated with topographic factors, indicating the effect of soil redistribution and moisture regime on in-field spatial variability. High-resolution maps of soil analyte concentrations can be used to improve precision environmental management of farmlands.
机译:使用机载成像光谱仪(400-2450 nm,〜10 nm分辨率,2.5 m空间分辨率)获得了六个耕作(土壤)农田的土壤高光谱反射率图像。分析了地表土壤样品(n = 315)的碳含量,粒度分布和15种重要的农学元素(Mehlich-III提取)。当使用图像衍生的反射光谱的偏最小二乘(PLS)回归来预测分析物浓度时,预测的19种分析物中有13种的R2> 0.50,包括碳(0.65),铝(0.76),铁(0.75)和粉砂。含量(0.79)。对15种光谱数学预处理方法的比较表明,一个简单的一阶导数几乎适用于所有分析物。将所得的PLS因子作为系数向量导出,并用于计算每个田地的土壤特性预测图。在光谱数据提取之前使用3×3低通滤波器对图像进行平滑处理可以提高预测精度。生成的栅格图显示出与地形因子相关的变化,表明土壤重新分布和水分状况对田间空间变异性的影响。土壤分析物浓度的高分辨率地图可用于改善农田的精确环境管理。

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