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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Speckle Noise and Soil Heterogeneities as Error Sources in a Bayesian Soil Moisture Retrieval Scheme for SAR Data
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Speckle Noise and Soil Heterogeneities as Error Sources in a Bayesian Soil Moisture Retrieval Scheme for SAR Data

机译:SAR数据的贝叶斯土壤水分检索方案中的斑点噪声和土壤异质性为误差源

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摘要

Soil moisture retrieval from SAR images is always affected by speckle noise and uncertainties associated to soil parameters, which impact negatively on the accuracy of soil moisture estimates. In this paper a soil moisture Bayesian estimator from polarimetric SAR images is proposed to address these issues. This estimator is based on a set of statistical distributions derived for the polarimetric soil backscattering coefficients, which naturally includes models for the soil scattering, the speckle and the soil spatial heterogeneity. As a natural advantage of the Bayesian approach, prior information about soil condition can be easily included, enhancing the performance of the retrieval. The Oh's model is used as scattering model, although it presents a limiting range of validity for the retrieval of soil moisture. After fully stating the mathematical modeling, numerical simulations are presented. First, traditional minimization-based retrieval is investigated. Then, it is compared with the Bayesian retrieval scheme. The results indicate that the Bayesian model enlarges the validity region of the minimization-based procedure. Moreover, as speckle effects are reduced by multilooking, Bayesian retrieval approaches the minimization-based retrieval. On the other hand, when speckle effects are large, an improvement in the accuracy of the retrieval is achieved by using a precise prior. The proposed algorithm can be applied to investigate which are the optimum parameters regarding multilooking process and prior information required to perform a precise retrieval in a given soil condition.
机译:从SAR图像中检索土壤水分总是受到散斑噪声和与土壤参数相关的不确定性的影响,这对土壤水分估计的准确性产生负面影响。本文提出了一种基于极化SAR图像的土壤水分贝叶斯估计器来解决这些问题。该估计器基于为极化土壤反向散射系数导出的一组统计分布,该统计分布自然包括土壤散射,斑点和土壤空间异质性的模型。作为贝叶斯方法的自然优势,可以轻松地包含有关土壤状况的先验信息,从而增强检索的性能。 Oh模型被用作散射模型,尽管它为土壤水分的获取提供了有限的有效性范围。在充分说明数学模型之后,将进行数值模拟。首先,研究传统的基于最小化的检索。然后,将其与贝叶斯检索方案进行比较。结果表明,贝叶斯模型扩大了基于最小化过程的有效性区域。此外,由于通过多视减少了斑点效应,所以贝叶斯检索接近基于最小化的检索。另一方面,当斑点效应大时,通过使用精确的先验来实现检索精度的提高。所提出的算法可用于研究关于多视过程的最佳参数以及在给定土壤条件下执行精确检索所需的先验信息。

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