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New microwave-based missions applications for rainfed crops characterization

机译:新的基于微波的任务应用于雨育作物的表征

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摘要

A multi-temporal/multi-sensor field experiment was conducted within the Soil Moisture Measurement Stations Network of the University of Salamanca (REMEDHUS) in Spain, in order to retrieve useful information from satellite Synthetic Aperture Radar (SAR) and upcoming Global Navigation Satellite Systems Reflectometry (GNSSR) missions. The objective of the experiment was first to identify which radar observables are most sensitive to the development of crops, and then to define which crop parameters the most affect the radar signal. A wide set of radar variables (backscattering coefficients and polarimetric indicators) acquired by Radarsat-2 were analyzed and then\udexploited to determine variables characterizing the crops. Field measurements were fortnightly taken at seven cereals plots between February and July, 2015. This work also tried to optimize the crop characterization through Landsat-8 estimations, testing and validating parameters such as the leaf area index, the fraction of vegetation cover and the vegetation water content, among others. Some of these parameters showed significant and relevant correlation with the Landsat-derived Normalized Difference Vegetation Index (R>0.60). Regarding the radar observables, the parameters the best characterized were biomass and height, which may be explored for inversion using SAR data as an input. Moreover, the differences in the correlations found for the different crops under study types suggested a way to a feasible classification of crops.
机译:在西班牙萨拉曼卡大学(REMEDHUS)的土壤水分测量站网络内进行了一个多时间/多传感器野外实验,目的是从合成孔径雷达(SAR)和即将到来的全球导航卫星系统中检索有用的信息反射法(GNSSR)任务。该实验的目的是首先确定哪些雷达观测值对农作物的生长最敏感,然后确定哪些农作物参数对雷达信号的影响最大。分析了Radarsat-2采集的各种雷达变量(后向散射系数和极化指标),然后\ ud加以利用以确定适合作物的变量。在2015年2月至2015年7月之间,每两周对七个谷物田进行实地测量。这项工作还试图通过Landsat-8估算,测试和验证参数(例如叶面积指数,植被覆盖率和植被)来优化作物特性。水分等。其中一些参数与Landsat归一化差异植被指数(R> 0.60)表现出显着且相关的相关性。关于雷达可观测物,最能表征的参数是生物量和高度,可以使用SAR数据作为输入进行反演。此外,在研究类型下发现的不同作物之间的相关性差异,提出了一种可行的作物分类方法。

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