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Soil moisture mapping using Sentinel-1 images: Algorithm and preliminary validation

机译:使用Sentinel-1图像进行土壤湿度制图:算法和初步验证

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摘要

The main objective of this research is to develop, test and validate a soil moisture content (SMC) algorithm for GMES Sentinel-1 characteristics. The SMC product, which is to be generated from Sentinel-1 data, requires an algorithm capable of processing operationally in near-real-time and delivering the product to the GMES services within 3. h from observation. An approach based on an Artificial Neural Network (ANN) has been proposed that represents a good compromise between retrieval accuracy and processing time, thus enabling compliance with the timeliness requirements. The algorithm has been tested and subsequently validated in several test areas in Italy, Australia, and Spain.In all cases the validation results were very much in line with GMES requirements (with RMSE generally <. 4%SMC - between 1.67%SMC and 6.68%SMC - and very low bias), except for the case of the test area in Spain, where the validation results were penalized by the availability of only VV polarized SAR images and MODIS low-resolution NDVI. Nonetheless, the obtained RMSE was slightly higher than 4%SMC.
机译:这项研究的主要目的是开发,测试和验证针对GMES Sentinel-1特性的土壤水分含量(SMC)算法。要从Sentinel-1数据生成SMC产品,需要一种算法,该算法必须能够进行近乎实时的操作,并能在观察后的3小时内将产品交付给GMES服务。已经提出了一种基于人工神经网络(ANN)的方法,该方法代表了检索精度和处理时间之间的良好折衷,因此能够满足及时性要求。该算法已经过测试,随后在意大利,澳大利亚和西班牙的多个测试区域进行了验证。 %SMC-和非常低的偏差),但西班牙的测试区域除外,在该区域中,仅通过VV极化SAR图像和MODIS低分辨率NDVI可以提供验证结果。但是,获得的RMSE略高于4%SMC。

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