Litcius/Paper detail

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

Éva Kovács, Chris Roelfsema, James Udy, Simon Baltais, Mitchell Lyons, Stuart Phinn

2022Remote Sensing15 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

SeagrassBayCoral reefRemote sensingEnvironmental scienceBathymetryBenthic habitatThalassia testudinumEstuaryOceanographyHabitatBenthic zoneCartographyGeographyGeologyEcologyBiologyMarine and coastal plant biologyCoral and Marine Ecosystems StudiesMarine and fisheries research