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Developing geographic weighted regression (GWR) technique for monitoring soil salinity using sentinel-2 multispectral imagery

机译:利用哨声-2多光谱图像开发地理加权回归(GWR)技术监测土壤盐度

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Soil salinity is a widespread natural hazard that negatively influences soil fertility and crop productivity. Using the potential of earth observation data and remote sensing technologies provides an opportunity to address this environmental issue and makes it possible to identify salt-affected regions accurately. While most of the utilized methods and model development techniques for monitoring soil salinity to date have been globally considered and tried to detect salinity and create predictive maps with a single regression algorithm, fewer studies have investigated the potential of local models and weighted regression techniques for estimating soil salinity. Accordingly, this research deals with monitoring surface soil salinity by the potential of Sentinel-2 multispectral imagery using the geographic weighted regression (GWR) technique. The field study was conducted in an area that has suffered from salinization, and the salinity of several soil samples was measured to be used as a source of ground truth data. The most efficient satellite features, which accurately predict surface soil salinity by its higher spectral reflectance, were derived from the Sentinel-2 data to be used as explanatory variables in the analysis. The GWR algorithm was then implemented with a fixed Gaussian kernel, and the optimized bandwidth was calculated in a calibration process using the cross-validation score (CV score). The results of the analysis proved that the GWR method has a great capability to predict soil salinity with an accuracy of two decimal places. The visual interpretation of the local estimates of coefficients and local t-values for each predictor variable has also been provided, which highlights the local variations in the study site. Finally, the achieved results were compared with the outcomes obtained from implementing two global regression techniques, Support Vector Machines (SVM), and Multiple Linear Regression (MLR), which confirmed the higher performance of the GWR algorithm.
机译:土壤盐度是一种广泛的自然危害,对土壤肥力和作物生产率负面影响。使用地球观测数据和遥感技术的潜力提供了解决这种环境问题的机会,并可以准确地识别含盐影响的地区。虽然大多数用于监测土壤盐度的利用方法和模型开发技术已经全局考虑并试图检测盐度并用单一回归算法创建预测地图,但研究较少的研究研究了本地模型和加权回归技术的估算土壤盐度。因此,该研究通过使用地理加权回归(GWR)技术来涉及由Sentinel-2多光谱图像的电位监测表面土壤盐度。该田间研究在遭受盐渍化的一个区域中进行,测量几种土壤样品的盐度以用作地面真理数据的来源。最有效的卫星特征,可通过其较高的光谱反射来预测表面土壤盐度,源自Sentinel-2数据以在分析中用作解释性变量。然后使用固定的高斯内核实现GWR算法,并且使用交叉验证得分(CV评分)在校准过程中计算优化的带宽。分析结果证明了GWR方法具有预测土壤盐度的绝佳能力,精度为两个小数位。还提供了对每个预测变量的系数和局部T值的局部估计的视觉解释,这突出了研究现场的局部变化。最后,将实现的结果与从实现两个全局回归技术,支持向量机(SVM)和多元线性回归(MLR)获得的结果进行了比较,这证实了GWR算法的更高性能。

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