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Inversion of Electromagnetic Models for Bare Soil Parameter Estimation from Multifrequency Polarimetric SAR Data

机译:基于多频极化SAR数据的电磁模型反演裸土参数估计

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摘要

The potentiality of polarimetric SAR data for the estimation of bare soil geophysical parameters (i.e., roughness and soil moisture) is investigated in this work. For this purpose, two forward models available in the literature, able to simulate the measurements of a multifrequency radar polarimeter, have been implemented for use within an inversion scheme. A multiplicative noise has been considered in the multidimensional space of the elements of the polarimetric Covariance Matrix, by adopting a complex Wishart distribution to account for speckle effects. An additive error has been also introduced on the simulated measurements to account for calibration and model errors. Maximum a Posteriori Probability and Minimum Variance criteria have been considered to perform the inversion. As for the algorithms to implement the criteria, simple optimization/integration procedures have been used. A Neural Network approach has been adopted as well. A correlation between the roughness parameters has been also supposed in the simulation as a priori information, to evaluate its effect on the estimation accuracy. The methods have been tested on simulated data to compare their performances as function of number of looks, incidence angles and frequency bands, thus identifying the best radar configuration in terms of estimation accuracy. Polarimetric measurements acquired during MAC Europe and SIR-C campaigns, over selected bare soil fields, have been also used as validation data.
机译:在这项工作中,研究了极化SAR数据对估算裸露土壤地球物理参数(即粗糙度和土壤湿度)的潜力。为此,已经实现了文献中可用的能够模拟多频雷达偏振计测量结果的两个正向模型,以用于反演方案。通过采用复杂的Wishart分布来解决斑点效应,已经在极化协方差矩阵的元素的多维空间中考虑了乘法噪声。在模拟测量中还引入了附加误差,以解决校准误差和模型误差。已经考虑了最大后验概率和最小方差准则来执行反演。至于实现标准的算法,已经使用了简单的优化/集成过程。还采用了神经网络方法。在模拟中还假定粗糙度参数之间的相关性作为先验信息,以评估其对估计精度的影响。该方法已经在模拟数据上进行了测试,以比较它们的性能与视线数量,入射角和频带的函数,从而根据估计精度确定最佳雷达配置。在MAC欧洲和SIR-C运动期间,在选定的裸土田间获得的极化测量值也已用作验证数据。

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