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National Scale Surface Deformation Time Series Generation through Advanced DInSAR Processing of Sentinel-1 Data within a Cloud Computing Environment

机译:通过云计算环境中的Sentinel-1数据的先进DINSAR处理,全国规模表面变形时间序列发电

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摘要

We present an automatic pipeline implemented within the Amazon Web Services (AWS) Cloud Computing platform for the interferometric processing of large Sentinel-1 (S1) multi-temporal SAR datasets, aimed at analyzing Earth surface deformation phenomena at wide spatial scale. The developed processing chain is based on the advanced DInSAR approach referred to as Small BAseline Subset (SBAS) technique, which allows producing, with centimeter to millimeter accuracy, surface deformation time series and the corresponding mean velocity maps from a temporal sequence of SAR images. The implemented solution addresses the aspects relevant to i) S1 input data archiving; ii) interferometric processing of S1 data sequences, performed in parallel on the AWS computing nodes through both multi-node and multi-core programming techniques; iii) storage of the generated interferometric products. The experimental results are focused on a national scale DInSAR analysis performed over the whole Italian territory by processing 18 S1 slices acquired from descending orbits between March 2015 and April 2017, corresponding to 2612 S1 acquisitions. Our analysis clearly shows that an effective integration of advanced remote sensing methods and new ICT technologies can successfully contribute to deeply investigate the Earth System processes and to address new challenges within the Big Data EO scenario.
机译:我们在Amazon Web服务(AWS)云计算平台内实现了一个自动管道,用于大哨兵-1(S1)多时间SAR数据集的干涉式处理,旨在分析在宽空间尺度上的地球表面变形现象。开发的处理链基于所谓的高级DINSAR方法,该方法被称为小基线子集(SBAS)技术,其允许厘米到毫米精度,表面变形时间序列和来自SAR图像的时间序列的相应平均速度图。实现的解决方案解决了与I)的方面)S1输入数据归档; ii)S1数据序列的干涉处理,通过多节点和多核编程技术并行地在AWS计算节点上执行; iii)存储产生的干涉式产品。实验结果专注于通过处理从2015年3月至2017年3月至2017年4月之间获得的18个S1切片,对应于2015年3月至2017年4月的下降轨道,相应于2612 S1收购的全部意大利领域进行的全国规模Dinsar分析。我们的分析清楚地表明,先进的遥感方法和新ICT技术的有效集成可以成功促进地球系统流程,并在大数据EO情景中解决新的挑战。

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