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Estimation of soil properties at the field scale from satellite data: a comparison between spatial and non-spatial techniques

机译:利用卫星数据估算田间土壤性质:空间技术与非空间技术之间的比较

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摘要

A study was carried out to investigate the usefulness of multispectral and hyperspectral satellite information for the estimation of soil properties of agronomic importance such as soil texture and organic matter (SOM) in cultivated fields by comparing different estimation procedures. Images acquired from the Advanced Land Imager (ALI) and Hyperion sensors on board the EO-1 satellite were used, in combination with ground-sampling data from an agricultural field in central Italy, to evaluate the advantage of taking into account the spatial correlation between pixels. For this purpose, partial least squares regression (PLSR), ordinary least square (OLS) regression, regression with correlated errors (restricted maximum likelihood; REML) and ordinary kriging (OK) were compared through leave-one-out cross-validation. In order to predict soil variables by different models, the predictors of OLS and REML regressions were obtained from principal component analysis (PCA), PLSR and the minimum noise fraction (MNF) transformations of spectral data on bare soil or vegetation images. The PLSR did not provide satisfactory results in terms of root mean square error (RMSE) and ratio of performance to interquartile range (RPIQ) statistics, even with hyperspectral data, mainly because of the poor signal to noise ratio (SNR) of the Hyperion sensor. The estimation accuracy increased by using the MNF method in combination with a linear mixed effect model. A multivariate approach was sometimes better than univariate ordinary kriging (OK), demonstrating the value of including Hyperion bare soil or vegetation data in the estimation procedure. Hyperspectral data provided better results than multispectral data for clay, sand and especially for SOM estimation, highlighting the value of high-resolution spectral data for soil-related applications.
机译:进行了一项研究,通过比较不同的估算程序,研究了多光谱和高光谱卫星信息对于估算农业重要土壤特性(如耕地中的土壤质地和有机质)的有用性。使用从EO-1卫星上的Advanced Land Imager(ALI)和Hyperion传感器获取的图像,结合来自意大利中部一个农田的地面采样数据,来评估考虑到两者之间空间相关性的优势像素。为此,通过留一法交叉验证比较了偏最小二乘回归(PLSR),普通最小二乘(OLS)回归,具有相关误差的回归(受限最大似然; REML)和普通克里格法(OK)。为了通过不同的模型预测土壤变量,从主成分分析(PCA),PLSR和裸土或植被图像上光谱数据的最小噪声分数(MNF)变换获得了OLS和REML回归的预测变量。即使使用高光谱数据,PLSR的均方根误差(RMSE)和性能与四分位数范围比(R​​PIQ)统计信息也无法提供令人满意的结果,这主要是因为Hyperion传感器的信噪比(SNR)较差。通过将MNF方法与线性混合效应模型结合使用,可以提高估计精度。有时多变量方法要优于单变量普通克里格法(OK),这表明在估计程序中包括Hyperion裸土或植被数据的价值。高光谱数据比粘土,沙子,尤其是SOM估计的多光谱数据提供了更好的结果,突出了高分辨率光谱数据在土壤相关应用中的价值。

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