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A robust statistical-based estimator for soil moisture retrieval from radar measurements

机译:基于统计的稳健估算器,可从雷达测量中获取土壤水分

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摘要

The authors examine the use of a robust statistical inversion approach to the estimation of soil moisture and roughness statistics from backscatter measurements. Two sets of basis functions are examined; the first is a set of basis functions from multinomial combinations of the inputs (termed the MBF) while the second is a set of basis functions generated by a multilayer perceptron referred to as MLPBF. The authors discuss potential sources of training patterns upon which to base these estimators, including empirical forward models and more rigorous theoretical scattering models such as the IEM. These estimators are applied to a set of measured POLARSCAT data from Oh et al. [1992]. Comparisons are made with other inversion methods including neural networks.
机译:作者研究了使用可靠的统计反演方法从反向散射测量中估算土壤湿度和粗糙度统计数据的方法。检查了两组基本函数;第一个是输入的多项组合(称为MBF)的一组基函数,而第二个是由多层感知器(称为MLPBF)生成的一组基函数。作者讨论了可能基于这些估计量的训练模式的潜在来源,包括经验正向模型和更严格的理论散射模型(例如IEM)。这些估算器应用于来自Oh等人的一组测量的POLARSCAT数据。 [1992]。与包括神经网络在内的其他反演方法进行了比较。

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