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A synergetic use of observations from modis, SEVIRI MSG, ASAR and AMSR-E to infer a daily soil moisture index

机译:协同用途使用MODIS,SEVIRI MSG,ASAR和AMSR-E来推断每日土壤湿度指数

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The objective of this study is to infer a soil moisture index from an approach mainly based on the concept of apparent thermal inertia (ATI). To reduce the effect of spurious variability and cloud presence, soil moisture temporal trend derived from passive microwave based product, namely the NASA AMSR-E-soil moisture product, are used as a tool to filter the data. The AMSR-E data due to their coarse resolution can be considered as natural “low pass filter” thus reducing the effect of noise. Furthermore, the approach considers the soil moisture estimates derived from SAR sensors and use them to spatially calibrate the information coming from the optical data. The algorithm has been validated over two different test areas in Italy and France where ground truth measurements were available. Four main clusters of ATI have been identified and classified into 4 different levels of wetness. In densely vegetated areas, only three classes of soil moisture were distinguishable. The comparison with ground measurements indicates an accuracy of around 88% on the Italian test sites and of 73% on the French test sites, the last mainly characterized by densely vegetated fields.
机译:本研究的目的是从一种方法推断土壤湿度指数,主要基于表观热惯性(ATI)的概念。为了降低杂散可变性和云存在的影响,从无源微波的产品源于无源微波的土壤水分趋势,即NASA AMSR-e-土壤水分产品,用作过滤数据的工具。由于其粗糙分辨率而导致的AMSR-E数据可以被认为是自然的“低通滤波器”,从而降低了噪声的效果。此外,该方法考虑了来自SAR传感器的土壤湿度估计,并使用它们来在空间校准来自光学数据的信息。该算法已在意大利和法国的两种不同的测试区域验证,其中可以使用地面真理测量。已经确定了四个主要的ATI集群并分为4种不同的湿度。在密集的植被区域中,只有三类土壤水分可区分。与地面测量的比较表明,意大利试验站点的准确度约为88%,并在法国测试网站上的73%,最后一个主要是植被植被的。

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