首页> 外文会议>International Society for Photogrammetry and Remote Sensing Commission Technical Commission Symposium >ASSESSMENT OF THE IMPACT OF UNCERTAINTY ON MODELED SOIL SURFACE ROUGHNESS ON SAR-RETRIEVED SOIL MOISTURE UNCERTAINTY
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ASSESSMENT OF THE IMPACT OF UNCERTAINTY ON MODELED SOIL SURFACE ROUGHNESS ON SAR-RETRIEVED SOIL MOISTURE UNCERTAINTY

机译:评估不确定性对SAR检测土壤水分不确定性模拟土壤表面粗糙度的影响

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Soil moisture retrieval from SAR images using semi-empirical or physically-based backscatter models requires surface roughness parameters, generally obtained by means of in situ measurements. However, measured roughness parameters often result in inaccurate soil moisture contents. Furthermore, when these retrieved soil moisture contents need to be used in data assimilation schemes, it is important to also assess the retrieval uncertainty. In this paper, a regression-based method is developed that allows for the parameterization of roughness by means of a probability distribution. This distribution is further propagated through an inverse backscatter model in order to obtain probability distributions of soil moisture content. About 70percent of the obtained distributions are skewed and non-normal and it is furthermore shown that their interquartile range differs with respect to soil moisture conditions. Comparison of soil moisture measurements with the retrieved median values results in a root mean square error of approximately 3.5 vol(percent).
机译:使用半经验或物理的后散射模型从SAR图像中检索土壤湿度需要表面粗糙度参数,通常通过原位测量获得。然而,测量的粗糙度参数通常导致土壤含水量不准确。此外,当这些检索的土壤水分含量需要用于数据同化方案时,重要的是评估检索不确定性。在本文中,开发了一种基于回归的方法,其允许通过概率分布来参数化粗糙度。该分布进一步通过反向散射模型传播,以获得土壤含水量的概率分布。大约70%的获得的分布是偏斜的并且是非正常的,并且还表明它们的间隙范围与土壤湿度条件不同。土壤湿度测量与检索的中值值的比较导致均大约3.5 Vol(百分比)的根均方误差。

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