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Automating sentinel-1 SLC product processing: Parallelization and optimization for efficient polarimetric parameter

Hansanee Fernando1, Kwabena Nketia1, Thuan Ha1

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Summary
This summary is machine-generated.

This study introduces an automated workflow for processing Sentinel-1 Single Look Complex (S1-SLC) data using RStudio, SNAP, and PolSARpro. The user-friendly process enables efficient, large-scale SAR data analysis with minimal programming expertise.

Keywords:
AutomationAutomation of processing S1 SLC imagesBatch-processingParallelizationPolSARproRStudioSNAPSentinel-1Single Look Complex

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Area of Science:

  • Remote Sensing
  • Geospatial Analysis
  • Computational Science

Background:

  • Processing Sentinel-1 (S1) Single Look Complex (SLC) data is computationally intensive and requires specialized software like SNAP or PolSARpro.
  • Manual processing of multiple S1-SLC files is time-consuming and prone to errors, hindering large-scale analysis.

Purpose of the Study:

  • To develop an automated, user-friendly workflow for processing an unlimited number of S1-SLC images.
  • To enable efficient SAR data processing for users with limited programming or SAR expertise.
  • To integrate RStudio, SNAP, and PolSARpro for a seamless and scalable processing pipeline.

Main Methods:

  • Developed a workflow integrating RStudio, SNAP, and PolSARpro for command-line processing on Windows.
  • Utilized SNAP's graphical user interface (GUI) to create a base-graph for essential SAR processing steps.
  • Implemented R-based batch processing with parallel computing for simultaneous graph execution and efficient parameter extraction.

Main Results:

  • Successfully automated the processing of multiple S1-SLC images, significantly reducing manual interaction.
  • Achieved interoperability between SNAP and PolSARpro outputs for advanced post-processing.
  • Demonstrated efficient resource utilization and computational performance through R-based parallelization.

Conclusions:

  • The proposed automated workflow streamlines S1-SLC data processing, making advanced SAR analysis accessible to a wider user base.
  • The integration of RStudio, SNAP, and PolSARpro offers a scalable and efficient solution for handling large volumes of SAR data.
  • This approach enhances SAR data processing capabilities, particularly for users with minimal programming or SAR expertise.