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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Estimation of active-passive microwave covariation using SMAP and Sentinel-1 data
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Estimation of active-passive microwave covariation using SMAP and Sentinel-1 data

机译:使用Smap和Sentinel-1数据估计主动被动微波协变量

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摘要

Active and passive microwave signals over land co-vary depending on their shared scattering and emission characteristics by soil and vegetation media. Estimates of this covariation can be used beneficially to downscale coarse-resolution brightness temperatures with high-resolution backscatter for enhanced-resolution Earth observations. In this study, a forward model of covariation for vegetated soil is derived by combining two well-established models of active and passive microwave interactions. The covariation model is inverted to obtain a single-pass observation-driven estimation of active-passive microwave covariation (beta) based on multi-channel radiometer and Synthetic Aperture Radar (SAR) scenes. A key feature of the estimation approach is that it is applicable to co-located spatial data scenes and does not rely on temporal information. We present applications of the estimation with combinations of SMAP (L-band) radiometry and both SMAP (L-band) and multi-angular Sentinel-1 (C-band) backscatter data. We first show that for the period of available SMAP L-band radiometer and radar data, the estimation approach for beta, introduced in this study, yields similar results as the statistical time-series approach originally designed for SMAP. The new single-pass approach also allows estimation of active-passive covariation where the statistical approach cannot be applied because dynamic range of brightness temperature and backscatter are too limited to allow regression. We then apply the developed estimation method to SMAP L-band radiometer and multi-angular Sentinel-1 C-band SAR data. Here, the study quantifies the effects of microwave frequency and look-angles on the covariation by applying the estimation globally and analyzing the results as a function of vegetation cover - a key determinant of the strength of the covariation.
机译:通过土地和植被培养基的共同散射和排放特性,在土地上的主动和被动微波信号。这种协变度的估计可以有利地用于低分粗辨率亮度温度,具有高分辨率反向散射,以增强分辨率的地球观测。在这项研究中,通过组合两个熟悉的活性和被动微波相互作用模型来源的植被土的转发模型。变焦模型被反转以获得基于多通道辐射计和合成孔径雷达(SAR)场景的主动被动微波协变量(Beta)的单通观察驱动估计。估计方法的一个关键特征是它适用于共同定位的空间数据场景,并且不依赖于时间信息。我们用SMAP(L波段)辐射测定的组合和SMAP(L波段)和多角哨哨式-1(C波段)反向散射数据的组合提供估计的应用。我们首先表明,对于可用的Smap L波段辐射计和雷达数据,本研究中介绍的β估算方法,产生类似的结果,作为最初为Smap设计的统计时间序列方法。新的单通方法还允许估计统计方法无法应用的,因为亮度温度和反向散射的动态范围太有限,以允许回归。然后,我们将开发的估计方法应用于SMAP L波段辐射计和多角哨哨声-1 C波段SAR数据。这里,该研究通过在全球施加估计并作为植被覆盖的函数分析结果来量化微波频率和视角对协变的影响 - 一种植被覆盖的函数 - 调节强度的关键决定因素。

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