Potential of mapping soil moisture by combining radar backscatter modeling and PolSAR decomposition

A. Merzouki, H. Mcnairn, A. Pacheco
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引用次数: 10

Abstract

The purpose of this study is to evaluate the capability of the Oh backscattering model in combination with the Freeman Durden decomposition to estimate soil moisture over agricultural fields from fully polarimetric RADARSAT-2 C-band SAR responses. Initially, soil moisture multi-polarization retrieval was accomplished by using a look-up table (LUT) approach applied to the Oh model. Two methods were considered: the multi-polarization method and the one-unknown configuration. Of the two methods, results showed that the HH-HV inversion provided the best estimates. In the second phase, the Freeman Durden decomposition was applied to the polarimetric data. The conceptual approach for retrieving soil moisture using the surface scattering component of the total power was implemented in a LUT inversion. The algorithm attempts to minimize the difference between measured single scattering power obtained by applying the Freeman Durden decomposition and simulated total power using Oh model. When compared with the multi-polarization approach, this polarimetry-based method improves the accuracy of soil moisture estimates.
结合雷达后向散射建模和PolSAR分解的土壤湿度制图潜力
本研究的目的是评估Oh后向散射模型结合Freeman Durden分解从RADARSAT-2 c波段全极化SAR响应中估计农田土壤湿度的能力。最初,土壤水分多极化反演是通过应用于Oh模型的查找表(LUT)方法完成的。考虑了两种方法:多极化法和单未知构型。结果表明,在两种方法中,HH-HV反演提供了最好的估计。在第二阶段,将Freeman Durden分解应用于极化数据。在LUT反演中实现了利用总功率的表面散射分量反演土壤水分的概念方法。该算法试图最小化利用Freeman Durden分解得到的实测单次散射功率与利用Oh模型模拟的总功率之间的差异。与多极化方法相比,该方法提高了土壤水分估算的精度。
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