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Power Sensitivity Analysis of Multi-Frequency, Multi-Polarized, Multi-Temporal SAR Data for Soil-Vegetation System Variables Characterization

机译:多频,多极化,多时相SAR数据的功率敏感性分析,用于土壤-植被系统变量表征

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The knowledge of spatial and temporal variability of soil water content and others soil-vegetation variables (leaf area index, fractional cover) assumes high importance in crop management. Where and when the cloudiness limits the use of optical and thermal remote sensing techniques, synthetic aperture radar (SAR) imagery has proven to have several advantages (cloud penetration, dayight acquisitions and high spatial resolution). However, measured backscattering is controlled by several factors including SAR configuration (acquisition geometry, frequency and polarization), and target dielectric and geometric properties. Thus, uncertainties arise about the more suitable configuration to be used. With the launch of the ALOS Palsar, Cosmo-Skymed and Sentinel 1 sensors, a dataset of multi-frequency (X, C, L) and multi-polarization (co- and cross-polarizations) images are now available from a virtual constellation; thus, significant issues concerning the retrieval of soil-vegetation variables using SAR are: (i) identifying the more suitable SAR configuration; (ii) understanding the affordability of a multi-frequency approach. In 2006, a vast dataset of both remotely sensed images (SAR and optical/thermal) and in situ data was collected in the framework of the AgriSAR 2006 project funded by ESA and DLR. Flights and sampling have taken place weekly from April to August. In situ data included soil water content, soil roughness, fractional coverage and Leaf Area Index (LAI). SAR airborne data consisted of multi-frequency and multi-polarized SAR images (X, C and L frequencies and HH, HV, VH and VV polarizations). By exploiting this very wide dataset, this paper, explores the capabilities of SAR in describing four of the main soil-vegetation variables (SVV). As a first attempt, backscattering and SVV temporal behaviors are compared (dynamic analysis) and single-channel regressions between backscattering and SVV are analyzed. Remarkably, no significant correlations were found between backscattering and soil roughness (over both bare and vegetated plots), whereas it has been noticed that the contributions of water content of soil underlying the vegetation often did not influence the backscattering (depending on canopy structure and SAR configuration). Most significant regressions were found between backscattering and SVV characterizing the vegetation biomass (fractional cover and LAI). Secondly, the effect of SVV changes on the spatial correlation among SAR channels (accounting for different polarization and/or frequencies) was explored. An inter-channel spatial/temporal correlation analysis is proposed by temporally correlating two-channel spatial correlation and SVV. This novel approach allowed a widening in the number of significant correlations and their strengths by also encompassing the use of SAR data acquired at two different frequencies.
机译:在作物管理中,对土壤含水量和其他土壤植被变量(叶面积指数,分数覆盖)的时空变异性的认识非常重要。在阴天限制了光学和热遥感技术的使用的时间和地点,合成孔径雷达(SAR)图像已被证明具有多种优势(云穿透,昼夜采集和高空间分辨率)。但是,测得的反向散射受几个因素控制,包括SAR配置(获取几何形状,频率和极化)以及目标介电和几何特性。因此,关于要使用的更合适的配置产生了不确定性。随着ALOS Palsar,Cosmo-Skymed和Sentinel 1传感器的推出,现在可以从虚拟星座中获得多频(X,C,L)和多极化(同极化和交叉极化)图像的数据集;因此,与使用SAR检索土壤植被变量有关的重要问题是:(i)确定更合适的SAR配置; (ii)了解多频方法的可承受性。 2006年,在由ESA和DLR资助的AgriSAR 2006项目框架中,收集了庞大的遥感图像(SAR和光学/热图像)和现场数据集。从4月到8月每周进行一次飞行和采样。原位数据包括土壤水分,土壤粗糙度,覆盖率和叶面积指数(LAI)。 SAR机载数据由多频和多极化SAR图像(X,C和L频率以及HH,HV,VH和VV极化)组成。通过利用这个非常广泛的数据集,本文探索了SAR在描述四个主要土壤植被变量(SVV)方面的功能。作为首次尝试,比较了反向散射和SVV的时间行为(动态分析),并分析了反向散射和SVV之间的单通道回归。值得注意的是,在反向散射与土壤粗糙度之间(在裸露和植被覆盖的土地上)都没有发现显着的相关性,但是已经注意到,植被下土壤的水分含量通常不会影响反向散射(取决于冠层结构和SAR)组态)。在反向散射和SVV之间最显着的回归是表征植被生物量的特征(分数覆盖和LAI)。其次,探讨了SVV变化对SAR通道之间空间相关性的影响(说明了不同的极化和/或频率)。通过时间相关的两通道空间相关性和SVV,提出了一种通道间空间/时间相关性分析。这种新方法还通过使用在两个不同频率下获取的SAR数据,扩大了重要相关性的数量及其强度。

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