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A Synergistic approach for Soil Moisture Estimation using Modified Dubois Model with Dual Polarized SAR and Optical Satellite data

机译:双偏振SAR和光学卫星数据改性Dubois模型的土壤水分估计协同方法

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This paper discusses about a estimation of soil moisture in agricultural region using SAR data with the use of HH and HV polarization. In this study the semi empirical approach derived by Dubois et al (~1) was modified to work using (σ°_(HH)) and (σ°_(VV)) so that soil moisture can be obtained for the larger area extent. The optical remote sensing is helps to monitor changes in vegetation biomass and canopy cover surface reflectance by using NDVI and LAI from which the site suitability from different landuse/landcover are identified. The second use involves retrieve the backscattering coefficient values (σ°) derived from SAR for soil moisture studies, In SAR techniques, the relative surface roughness can be directly estimate using surface roughness derivation empirical algorithms. The mid incidence angle is used to overcome the incidence angle effect and it worked successfully to this study. The modified Dubois Model (MDM) in combination with The Topp's et al (~2) model is used to retrieve soil moisture. These two models have equations (HH, VV) and two independent variables i.e. root mean square height (s) and dielectric constant (ε). The linear regression analysis is performed and the surface roughness derived from SAR is well correlated with ground surface roughness having the value of (r~2 = 0.69). By using the dielectric constant (ε) the modified dubois model in combination with topp's model are performed and the soil moisture is derived from SAR having value of (r~2 = 0.60). Thus, the derived model is having good scope for soil moisture monitoring with present availability of SAR datasets.
机译:本文探讨了使用HH和HV极化使用SAR数据的农业区土壤水分估计。在这项研究中,通过(σ°_(HH))和(σ°_(vV))来修改由Dubois等(〜1)衍生的半经验方法,使土壤湿度可以获得更大的区域范围。光学遥感有助于通过使用NDVI和LAI来监测植被生物质和冠层覆盖表面反射的变化,从中识别出不同土地使用的场地适用性。第二种使用涉及检索从SAR技术的SAR衍生自SAR的反向散射系数(σ°),在SAR技术中,相对表面粗糙度可以使用表面粗糙度推导经验算法直接估计。中间入射角用于克服入射角效应,并成功地工作到这项研究。改进的Dubois模型(MDM)与TopP的等(〜2)模型组合使用来检索土壤水分。这两种型号具有等式(HH,VV)和两个独立变量,即根均线高度(S)和介电常数(ε)。执行线性回归分析,并且源自SAR的表面粗糙度与具有(R〜2 = 0.69)的值的地表粗糙度相关。通过使用介电常数(ε)进行改性的Dubois模型与TOPP模型的组合,并且土壤水分源自具有值(R〜2 = 0.60)的SAR。因此,衍生的模型具有良好的土壤湿度监测范围,具有SAR数据集的目的可用性。

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