Cloud Platform for Scientific Advances in Earth Surface Interferometric SAR Image Analysis

L. Mossucca, I. Zinno, S. Elefante, C. Luca, V. Casola, O. Terzo, F. Casu, R. Lanari
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引用次数: 1

Abstract

The advanced Differential SAR Interferometers (DInSAR) methodologies are widely used for the investigation of Earth's surface deformation phenomena. In particular, the advanced DInSAR approach referred to as Small Baseline Subset (SBAS) technique is able to produce deformation velocity maps and the corresponding displacement time-series from a temporal sequence of space borne SAR acquisitions. Considering the already huge SAR data archives as well the upcoming massive data flow coming from the SENTINEL satellite constellation, cloud computing can be a valid solution to carry out DInSAR analyses thanks to its scalability and flexibility features. In this paper, the focus is given on the migration of the whole parallel version of the SBAS technique, namely P-SBAS, to a cloud environment by taking into account different parameters that influence processing time. Experimental tests that have been performed using both private and public cloud are also presented.
地表干涉SAR图像分析科学进展的云平台
先进的差分SAR干涉仪(DInSAR)方法被广泛用于地球表面变形现象的研究。特别是,被称为小基线子集(SBAS)技术的先进DInSAR方法能够从星载SAR获取的时间序列中生成变形速度图和相应的位移时间序列。考虑到已经庞大的SAR数据档案以及即将到来的来自SENTINEL卫星星座的海量数据流,云计算由于其可扩展性和灵活性的特点,可以成为进行DInSAR分析的有效解决方案。在本文中,重点是考虑到影响处理时间的不同参数,将SBAS技术的整个并行版本(即P-SBAS)迁移到云环境。还介绍了使用私有云和公共云进行的实验测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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