2023
DOI: 10.3389/fmars.2022.1034188
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Deep blue artificial intelligence for knowledge discovery of the intermediate ocean

Abstract: Oceans at a depth ranging from ~100 to ~1000-m (defined as the intermediate water here), though poorly understood compared to the sea surface, is a critical layer of the Earth system where many important oceanographic processes take place. Advances in ocean observation and computer technology have allowed ocean science to enter the era of big data (to be precise, big data for the surface layer, small data for the bottom layer, and the intermediate layer sits in between) and greatly promoted our understanding o… Show more

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Cited by 2 publications
(1 citation statement)
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References 63 publications
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“…Combining these datasets generates a weekly product, providing a comprehensive representation of continuous green tide changes. In recent years, propelled by the rapid advancements in artificial intelligence (AI) technology (Jordan et al, 2015;LeCun et 75 al., 2015;Li et al, 2020;Dong et al, 2022;Li et al, 2022;Chen et al, 2023;Wang and Li, 2024) extraction algorithms based on deep learning have emerged. Notably, models such as the AlageNet (Gao et al, 2022) and GANet (Guo et al, 2022) leverage image texture enhancement mechanisms and attention mechanisms, effectively addressing the challenge of algae-water imbalance for the optical MODIS and Sentinel-1 SAR imagery.…”
mentioning
confidence: 99%
“…Combining these datasets generates a weekly product, providing a comprehensive representation of continuous green tide changes. In recent years, propelled by the rapid advancements in artificial intelligence (AI) technology (Jordan et al, 2015;LeCun et 75 al., 2015;Li et al, 2020;Dong et al, 2022;Li et al, 2022;Chen et al, 2023;Wang and Li, 2024) extraction algorithms based on deep learning have emerged. Notably, models such as the AlageNet (Gao et al, 2022) and GANet (Guo et al, 2022) leverage image texture enhancement mechanisms and attention mechanisms, effectively addressing the challenge of algae-water imbalance for the optical MODIS and Sentinel-1 SAR imagery.…”
mentioning
confidence: 99%