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Retrieval of paddy rice variables during the growth season with a modified water cloud model on polarimetric radar images

机译:利用极化雷达图像上改进的水云模型反演生长季水稻变量

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This paper proposed a modified Water Cloud Model (MWCM) for rice variable estimation during the whole growth season with eight RADARSAT-2 quad-pol SAR images. The improvements achieved with the MWCM include considering the heterogeneity of water content of the rice canopy in different directions and different phenologies, and applying the scattering components from an improved polarimetric decomposition in the model instead of the backscattering coefficients. With the MWCM, four rice variables were estimated through the genetic algorithm, including leaf area index (LAI), rice height (h), volumetric water content of total canopy (mv) and ear biomass (De). The validation was conducted using the field data with the average R2 of each variable above 0.8. The median relative error (MRE) of the rice variables ranged from 9% to 15% in most phenological stages. The results demonstrated that the MWCM works well for the estimation of rice biophysical parameters with polarimetric SAR data, and it is significant to consider the heterogeneity of water content of the rice canopy in the horizontal direction for estimation of rice variables during the whole rice growth season.
机译:本文提出了一种改进的水云模型(MWCM),利用八个RADARSAT-2四极化SAR图像对整个生长季的水稻变量进行估算。 MWCM实现的改进包括考虑不同方向和不同物候条件下水稻冠层水分的不均匀性,并在模型中应用来自改进的极化分解的散射分量,而不是后向散射系数。利用MWCM,通过遗传算法估计了四个水稻变量,包括叶面积指数(LAI),水稻高度(h),总冠层的体积含水量(mv)和穗生物量(De)。使用现场数据进行验证,每个变量的平均R2均大于0.8。在大多数物候阶段,水稻变量的中位相对误差(MRE)为9%至15%。结果表明,MWCM方法能很好地利用极化SAR数据估算水稻的生物物理参数,考虑整个水平上水稻冠层水分水平的非均质性对估算水稻变量具有重要意义。 。

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