Remote Sensing (Jan 2022)

Cloud Processing for Simultaneous Mapping of Seagrass Meadows in Optically Complex and Varied Water

  • Eva M. Kovacs,
  • Chris Roelfsema,
  • James Udy,
  • Simon Baltais,
  • Mitchell Lyons,
  • Stuart Phinn

DOI
https://doi.org/10.3390/rs14030609
Journal volume & issue
Vol. 14, no. 3
p. 609

Abstract

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Improved development of remote sensing approaches to deliver timely and accurate measurements for environmental monitoring, particularly with respect to marine and estuarine environments is a priority. We describe a machine learning, cloud processing protocol for simultaneous mapping seagrass meadows in waters of variable quality across Moreton Bay, Australia. This method was adapted from a protocol developed for mapping coral reef areas. Georeferenced spot check field-survey data were obtained across Moreton Bay, covering areas of differing water quality, and categorized into either substrate or ≥25% seagrass cover. These point data with coincident Landsat 8 OLI satellite imagery (30 m resolution; pulled directly from Google Earth Engine’s public archive) and a bathymetric layer (30 m resolution) were incorporated to train a random forest classifier. The semiautomated machine learning algorithm was applied to map seagrass in shallow areas of variable water quality simultaneously, and a bay-wide map was created for Moreton Bay. The output benthic habitat map representing seagrass presence/absence was accurate (63%) as determined by validation with an independent data set.

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