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Repository Details

Algorithms and utilities for Synthetic Aperture Radar (SAR) sensors

Sarsen

Algorithms and utilities for Synthetic Aperture Radar (SAR) sensors. Enables cloud-native SAR processing via Xarray and Dask.

This Open Source project is sponsored by B-Open - https://www.bopen.eu.

Features and limitations

Sarsen is a Python library and command line tool with the following functionalities:

  • provides algorithms to terrain-correct satellite SAR data
    • geometric terrain correction (geocoding)
      • fast mode: to terrain-correct images
      • accurate mode: for interferometric processing
    • radiometric terrain correction (gamma flattening)
  • accesses SAR data via xarray-sentinel:
    • supports most Sentinel-1 data products as distributed by ESA:
      • Sentinel-1 Single Look Complex (SLC) SM/IW/EW
      • Sentinel-1 Ground Range Detected (GRD) SM/IW/EW
    • reads uncompressed and compressed SAFE data products on the local computer or on a network via fsspec - depends on rasterio>=1.3
  • accesses DEM data via rioxarray:
    • reads local and remote data in virtually any raster format via rasterio / GDAL
  • supports larger-than-memory and distributed data access and processing via Dask
    • efficient geometric terrain-correction for a full GRD
    • efficient radiometric terrain-correction for a full GRD.

Overall, the software is in the beta phase and the usual caveats apply.

Current limitations:

  • documentation needs improvement. See #6.

Non-objectives / Caveat emptor items:

  • No attempt is made to support UTC leap seconds. Observations that include a leap second may crash the code or silently return wrong results.

SAR terrain-correction

The typical side-looking SAR system acquires data with uniform sampling in azimuth and slant range, where the azimuth and range represents the time when a given target is acquired and the absolute sensor-to-target distance, respectively. Because of this, the near range appears compressed with respect to the far range. Furthermore, any deviation of the target elevation from a smooth geoid results in additional local geometric and radiometric distortions known as foreshortening, layover and shadow.

  • Radar foreshortening: Terrain surfaces sloping towards the radar appear shortened relative to those sloping away from the radar. These regions are much brighter than other places on the SAR image.
  • Radar layover: It's an extreme case of foreshortening occurring when the terrain slope is greater than the angle of the incident signal.
  • Radar shadows: They occur when ground points at the same azimuth but different slant ranges are aligned in the direction of the line-of-sight. This is usually due to a back slope with an angle steeper than the viewing angle. When this happens, the radar signal never reaches the farthest points, and thus there is no measurement, meaning that this lack of information is unrecoverable.

The geometric terrain correction (GTC) corrects the distortions due to the target elevation. The radiometric terrain correction (RTC) also compensates for the backscatter modulation generated by the topography of the scene.

Install

The easiest way to install sarsen is in a conda environment. The following commands create a new environment, activate it, install the package and its dependencies:

  conda create -n SARSEN
  conda activate SARSEN
  conda install -c conda-forge dask proj-data sarsen

Note that theย proj-data package is rather large (500+Mb) and it is only needed to handle input DEM whose vertical coordinate is not on a known ellipsoid, for example SRTM DEM with heigths over the EGM96 geoid.

Command line usage

The sarsen command line tool corrects SAR data based on a selected DEM and may produce geometrically terrain-corrected images (GTC) or radiometrically terrain-corrected images (RTC). Terrain-corrected images will have the same pixels as the input DEM, that should be resampled to the target projection and spacing in advance, for example using gdalwarp.

The following command performs a geometric terrain correction:

  sarsen gtc S1B_IW_GRDH_1SDV_20211217T141304_20211217T141329_030066_039705_9048.SAFE IW/VV South-of-Redmond-10m_UTM.tif

Performing geometric and radiometric terrain correction is more demanding, but it is possible to produce the RTC of a full GRD product at a 10m resolution in one go (and it takes approx 25 minutes on a 32Gb MacBook Pro):

  sarsen rtc S1B_IW_GRDH_1SDV_20211217T141304_20211217T141329_030066_039705_9048.SAFE IW/VV South-of-Redmond-10m_UTM.tif

Python API usage

The python API has entry points to the same commands and it also gives access to several lower level algorithms, but internal APIs should not be considered stable:

The following code applies the geometric terrain correction to the VV polarization of "S1B_IW_GRDH_1SDV_20211217T141304_20211217T141329_030066_039705_9048.SAFE" product:

>>> import sarsen
>>> product = sarsen.Sentinel1SarProduct(
...   "tests/data/S1B_IW_GRDH_1SDV_20211223T051122_20211223T051147_030148_039993_5371.SAFE",
...   measurement_group="IW/VV",
... )
>>> gtc = sarsen.terrain_correction(
...   product,
...   dem_urlpath="tests/data/Rome-30m-DEM.tif",
... )

The radiometric correction can be activated using the key correct_radiometry:

>>> rtc = sarsen.terrain_correction(
...   product,
...   dem_urlpath="tests/data/Rome-30m-DEM.tif",
...   correct_radiometry="gamma_nearest"
... )

Reference documentation

This is the list of the reference documents:

Project resources

on-push codecov

Contributing

The main repository is hosted on GitHub. Testing, bug reports and contributions are highly welcomed and appreciated:

https://github.com/bopen/sarsen

Lead developer:

Main contributors:

See also the list of contributors who participated in this project.

Sponsoring

B-Open commits to maintain the project long term and we are happy to accept sponsorships to develop new features.

We wish to express our gratitude to the project sponsors:

  • Microsoft has sponsored the support for GRD products and the gamma flattening algorithm.

License

Copyright 2016-2022 B-Open Solutions srl

Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at

  http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.

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