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Sentinel-1 Imagery Incorporating Machine Learning for Dryland Salinity Monitoring: A Case Study in Esperance, Western Australia

机译:Sentinel-1 Imagery ConstrationS Dryland Salinity Monitoring的机器学习:澳大利亚西部河斯佩斯的案例研究

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Due to the lack of a suitable theoretical model for simulating radar backscatter of soil based on salt content, we investigated a new method to exploit Sentinel-1 radar backscatters and polarimetric decomposition information for dryland soil salinity monitoring. Soil electrical conductivity (EC) was estimated using Sentinel-1 SAR imagery and field survey data combined with five machine learning models in Esperance, located in the southwest of Western Australia (SWWA). The performance of the five machine learning models was assessed and compared using the root-mean-square error (RMSE), the mean absolute error (MAE), and the correlation coefficient ( r). The results revealed that the Random Forest Regression model (RFR) yielded the highest prediction performance ( RMSE=2.89 S/m, MAE=1.90 S/m, and r=0.81) and outperformed the other models. It can be concluded that the intensity images of VV and VH polarization of SAR imagery have the potential to predict EC of soils in SWWA.
机译:由于缺乏基于盐含量的土壤的雷达反向散射的合适理论模型,我们调查了一种新的方法,用于利用哨兵-1雷达背拍和旱地土壤盐度监测的Polariemetric分解信息。使用Sentinel-1 SAR图像和现场调查数据估计土壤导电性(EC)与斯殖的五种机器学习模型相结合,位于西澳大利亚西南部(SWWA)。使用根均方误差(RMSE),平均绝对误差(MAE)和相关系数(R)进行评估和比较五种机器学习模型的性能。结果表明,随机森林回归模型(RFR)产生了最高的预测性能(RMSE = 2.89 S / M,MAE = 1.90 S / M,r = 0.81),并且优于其他模型。可以得出结论,SAR图像的VV和VH偏振的强度图像具有预测SWWA中的土壤的潜力。

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