Abstract

We present in this work an advanced processing pipeline for continental scale differential synthetic aperture radar (DInSAR) deformation time series generation, which is based on the parallel small baseline subset (P-SBAS) approach and on the joint exploitation of Sentinel-1 (S-1) interferometric wide swath (IWS) SAR data, continuous global navigation satellite system (GNSS) position time-series, and cloud computing (CC) resources. We first briefly describe the basic rationale of the adopted P-SBAS processing approach, tailored to deal with S-1 IWS SAR data and to be implemented in a CC environment, highlighting the innovative solutions that have been introduced in the processing chain we present. They mainly consist in a series of procedures that properly exploit the available GNSS time series with the aim of identifying and filtering out possible residual atmospheric artifacts that may affect the DInSAR measurements. Moreover, significant efforts have been carried out to improve the P-SBAS processing pipeline automation and robustness, which represent crucial issues for interferometric continental scale analysis. Then, a massive experimental analysis is presented. In this case, we exploit: (i) the whole archive of S-1 IWS SAR images acquired over a large portion of Europe, from descending orbits, (ii) the continuous GNSS position time series provided by the Nevada Geodetic Laboratory at the University of Nevada, Reno, USA (UNR-NGL) available for the investigated area, and (iii) the ONDA platform, one of the Copernicus Data and Information Access Services (DIAS). The achieved results demonstrate the capability of the proposed solution to successfully retrieve the DInSAR time series relevant to such a huge area, opening new scenarios for the analysis and interpretation of these ground deformation measurements.

Highlights

  • The Sentinel-1 (S-1) constellation of the Copernicus Program represents a big revolution within the Earth Observation (EO) scenario, providing an unprecedented operational capability for intensive radar mapping of the Earth surface thanks to its two satellites (Sentinel-1A and B, launched on April 2014 and April 2016, respectively) sharing the same polar-orbit plane and performing C-band synthetic aperture radar (SAR) imaging [1]

  • We present in this work an advanced processing pipeline for continental scale differential synthetic aperture radar (DInSAR) deformation time series generation, which is based on the parallel small baseline subset (P-SBAS) approach and on the joint exploitation of Sentinel-1 (S-1) interferometric wide swath (IWS) SAR data, continuous global navigation satellite system (GNSS) position time-series, and cloud computing (CC) resources

  • In this work we present an automatic processing pipeline that exploits cloud computing (CC) resources, based on an advanced version of the P-SBAS processing chain for continental scale deformation time series generation, which benefits from the joint exploitation of S-1 IWS SAR data and global navigation satellite system (GNSS) position time series

Read more

Summary

Introduction

The Sentinel-1 (S-1) constellation of the Copernicus Program represents a big revolution within the Earth Observation (EO) scenario, providing an unprecedented operational capability for intensive radar mapping of the Earth surface thanks to its two satellites (Sentinel-1A and B, launched on April 2014 and April 2016, respectively) sharing the same polar-orbit plane and performing C-band synthetic aperture radar (SAR) imaging [1]. The S-1 constellation has stringent requirements based on a high attitude and orbit accuracy, and it is intrinsically characterized by small spatial and temporal baselines, with an “orbital tube” of about 200 m nominal diameter and a revisit time of six days (12 days in the case of only one operating satellite) These characteristics make the S-1 IWS data suitable for exploitation through (conventional and advanced) differential SAR interferometry (DInSAR) techniques [5,6,7], opening the possibility to investigate Earth surface deformation phenomena at unprecedented spatial and/or temporal scales.

The S-1 P-SBAS Approach
Joint Exploitation of GNSS and DInSAR Measurements
GNSS Data Screening and Selection
DInSAR Deformation Signals Refinement
Conclusions
Findings
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call