Multispectral Satellite Image Analysis for Computing Vegetation Indices by R in the Khartoum Region of Sudan, Northeast Africa.

J Imaging

Laboratory of Image Synthesis and Analysis (LISA), École Polytechnique de Bruxelles (Brussels Faculty of Engineering), Université Libre de Bruxelles (ULB), Building L, Campus du Solbosch, ULB-LISA CP165/57, Avenue Franklin D. Roosevelt 50, 1050 Brussels, Belgium.

Published: May 2023

AI Article Synopsis

  • Desertification is a major climate issue affecting the Sudan-Sahel region, assessed using satellite imagery and vegetation indices (VIs).
  • This study utilizes R-language packages 'raster' and 'terra' to analyze Landsat images from 2013, 2018, and 2022 in the confluence area of the Blue and White Niles in Sudan.
  • By calculating and visualizing five VIs, the research reveals previously unknown vegetation patterns and enhances understanding of climate-vegetation dynamics through automated image analysis.

Article Abstract

Desertification is one of the most destructive climate-related issues in the Sudan-Sahel region of Africa. As the assessment of desertification is possible by satellite image analysis using vegetation indices (VIs), this study reports on the technical advantages and capabilities of scripting the 'raster' and 'terra' R-language packages for computing the VIs. The test area which was considered includes the region of the confluence between the Blue and White Niles in Khartoum, southern Sudan, northeast Africa and the Landsat 8-9 OLI/TIRS images taken for the years 2013, 2018 and 2022, which were chosen as test datasets. The VIs used here are robust indicators of plant greenness, and combined with vegetation coverage, are essential parameters for environmental analytics. Five VIs were calculated to compare both the status and dynamics of vegetation through the differences between the images collected within the nine-year span. Using scripts for computing and visualising the VIs over Sudan demonstrates previously unreported patterns of vegetation to reveal climate-vegetation relationships. The ability of the R packages 'raster' and 'terra' to process spatial data was enhanced through scripting to automate image analysis and mapping, and choosing Sudan for the case study enables us to present new perspectives for image processing.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10219030PMC
http://dx.doi.org/10.3390/jimaging9050098DOI Listing

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