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Quantification of soil moisture variability over agriculture fields using Sentinel imagery

机译:利用Sentinel影像量化农田土壤水分的变异性

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The purpose of this study is to quantify soil moisture variability in agriculture fields at field scale resolution using the Sentinel data (Sentinel-1 and Sentinel-2) based on a change detection technique. For calibration and validation of our model, ground measurements at 40 sampling sites in southern Manitoba, Canada, were carried out during the field campaign of SMAP Validation Experiment 2016 in Manitoba (SMAPVEX16-MB). The developed method is based on modelling soil moisture change by combining the difference in backscattered signal with that of NDVI observed on two consecutive acquisition days. This approach makes the assumption that the change in Normalized Difference Vegetation Index (NDVI) could better represent the attenuation of the backscattered signal resulting from the vegetation. Our model was evaluated over mature crop fields (canola, soybeans, wheat, corn and oats) using ground measurements and the agreement between satellite estimates and ground measurements was found satisfactory (RMSE lower than 0.093 m3/m3).
机译:这项研究的目的是使用基于变化检测技术的Sentinel数据(Sentinel-1和Sentinel-2)以田间分辨率对农田中土壤水分的变异性进行量化。为了对我们的模型进行校准和验证,在加拿大曼尼托巴南部的40个采样点进行了地面测量,该测量是在曼尼托巴2016年SMAP验证实验(SMAPVEX16-MB)的野外活动期间进行的。所开发的方法基于对土壤水分变化的建模,方法是将连续两个采集日观测到的反向散射信号差异与NDVI相结合。该方法假设归一化植被指数(NDVI)的变化可以更好地表示植被造成的反向散射信号的衰减。我们使用地面测量值对成熟农作物田(油菜籽,大豆,小麦,玉米和燕麦)进行了模型评估,发现卫星估算值与地面测量值之间的一致性令人满意(RMSE低于0.093 m3 / m3)。

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