Evaluating SAR Radiometric Terrain Correction Products: Analysis-Ready Data for Users

Author:

Flores-Anderson Africa I.123ORCID,Parache Helen Blue4,Martin-Arias Vanesa12ORCID,Jiménez Stephanie A.12,Herndon Kelsey12,Mehlich Stefanie12ORCID,Meyer Franz J.5ORCID,Agarwal Shobhit6,Ilyushchenko Simon6,Agarwal Manoj6,Nicolau Andrea7ORCID,Markert Amanda12,Saah David78ORCID,Cherrington Emil12

Affiliation:

1. Earth System Science Center, University of Alabama in Huntsville, Huntsville, AL 35899, USA

2. SERVIR Science Coordination Office at Marshall Space Flight Center, Huntsville, AL 35812, USA

3. Department of Natural Resource Sciences, McGill University, Ste. Anne de Bellevue, QC H9X 3V9, Canada

4. NASA Marshall Space Flight Center, Huntsville, AL 35812, USA

5. Geophysical Institute, University of Alaska, Fairbanks, AK 99775, USA

6. Google, Inc., Mountain View, CA 94043, USA

7. Spatial Informatics Group, LLC, 2529 Yolanda Ct, Pleasanton, CA 94566, USA

8. Department of Environmental Science, University of San Francisco, San Francisco, CA 94117, USA

Abstract

Operational applications for Synthetic Aperture Radar (SAR) are under development around the world, driven by the free-and-open access of SAR C-band observations that Sentinel-1 of Copernicus has provided since 2014. Radiometric Terrain Correction (RTC) data are key entry-level products for multiple applications ranging from ecosystem to hazard monitoring. Various open-source software packages exist to create RTC products from Single Look Complex (SLC) or Ground Range Detected (GRD) level SAR data, including the Interferometric SAR Computing Environment (ISCE), and the Sentinel-1 Toolbox from the European Space Agency (SNAP 8). Despite the growing availability of RTC software solutions, little work has been performed to identify differences between RTC products generated using different software packages. This work evaluates several Sentinel-1 RTC products and two other Sentinel-1 Analysis Ready Data (ARD) to address the following questions: (1) Which software provides the most accurate RTC product? and (2) how appropriate for analysis are other non-RTC products that are readily available? The RTCs are produced with GAMMA, ISCE-2, and SNAP 8. The other two ARD products evaluated consisted of an angular-based radiometric slope correction produced in Google Earth Engine (GEE) following Vollrath et al., and the Sentinel-1 GRD product. Products are evaluated across 10 sites in a single image approach for (1) radiometric calibration, (2) geometric corrections, and for (3) geolocation quality. In addition, time-series stacks over two sites representing varied terrain and ecosystems are evaluated. The GAMMA-derived RTC product implemented by the Alaska Satellite Facility (ASF) is used as a reference for some of the time-series metrics. The results provide direct guidance and recommendations about the quality of the RTC and ARD products obtained from open source methods. The results indicate that it is not recommended to use the GRD product with no radiometric or geometric corrections for any applications given low performance in multiple metrics. The radiometric calibration and geometric corrections have overall good performance for all open-source solutions, only the non-RTC products (Vollrath et al. and GRD) portray some significant variances in steep terrain. The geolocation assessment indicated that the GRD product has the most significant displacement errors, followed by SNAP 8 with Digital Elevation Model (DEM) matching, and ISCE-2. RTCs created without DEM-matching performed better for both GAMMA and SNAP 8. The time-series results indicate that SNAP 8 products align more closely to GAMMA products than other open-source software in terms of radiometric and geometric quality. This understanding of software performance for SAR image processing is key to designing the affordable and scalable solutions needed for the operational application of SAR Sentinel-1 data.

Funder

NASA and UAH

SERVIR

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference51 articles.

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