ERISNet: deep neural network for Sargassum detection along the coastline of the Mexican Caribbean.
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Date
2019Author
Arellano-Verdejo, J.
Lazcano-Hernandez, H.E.
Cabanillas-Terán, N.
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Recently, Caribbean coasts have experienced atypical massive arrivals of pelagic
Sargassum with negative consequences both ecologically and economically. Based
on deep learning techniques, this study proposes a novel algorithm for floating
and accumulated pelagic Sargassum detection along the coastline of Quintana Roo,
Mexico. Using convolutional and recurrent neural networks architectures, a deep neural
network (named ERISNet) was designed specifically to detect these macroalgae along
the coastline through remote sensing support. A new dataset which includes pixel values
with and without Sargassum was built to train and test ERISNet. Aqua-MODIS imagery
was used to build the dataset. After the learning process, the designed algorithm achieves
a 90% of probability in its classification skills. ERISNet provides a novel insight to detect
accurately algal blooms arrivals......
Journal
PeerJVolume
7Issue
Article e6842Page Range
19pp.Document Language
enSustainable Development Goals (SDG)
14.2Essential Ocean Variables (EOV)
Macroalgal canopy cover and compositionMaturity Level
TRL 8 Actual system completed and "mission qualified" through test and demonstration in an operational environment (ground or space)Best Practice Type
Best PracticeManual (incl. handbook, guide, cookbook etc)
Spatial Coverage
Caribbean SeaMexico
DOI Original
http://doi.org/10.7717/peerj.6842Citation
Arellano-Verdejo, J,; Lazcano-Hernandez, H.E. and Cabanillas-Terán, N. (2019) ERISNet: deep neural network for Sargassum detection along the coastline of the Mexican Caribbean. PeerJ, 7:e6842 DOI: http://doi.org/10.7717/peerj.6842Collections
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