| Literature DB >> 33727570 |
Chris Roelfsema1, Eva M Kovacs2, Kathryn Markey2, Julie Vercelloni3,4,5, Alberto Rodriguez-Ramirez3, Sebastian Lopez-Marcano3,4, Manuel Gonzalez-Rivero3,4, Ove Hoegh-Guldberg3,4, Stuart R Phinn2.
Abstract
This paper describes benthic coral reef community composition point-based field data sets derived from georeferenced photoquadrats using machine learning. Annually over a 17 year period (2002-2018), data were collected using downward-looking photoquadrats that capture an approximately 1 m2 footprint along 100 m-1500 m transect surveys distributed along the reef slope and across the reef flat of Heron Reef (28 km2), Southern Great Barrier Reef, Australia. Benthic community composition for the photoquadrats was automatically interpreted through deep learning, following initial manual calibration of the algorithm. The resulting data sets support understanding of coral reef biology, ecology, mapping and dynamics. Similar methods to derive the benthic data have been published for seagrass habitats, however here we have adapted the methods for application to coral reef habitats, with the integration of automatic photoquadrat analysis. The approach presented is globally applicable for various submerged and benthic community ecological applications, and provides the basis for further studies at this site, regional to global comparative studies, and for the design of similar monitoring programs elsewhere.Entities:
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Year: 2021 PMID: 33727570 PMCID: PMC7966393 DOI: 10.1038/s41597-021-00871-5
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444