2024
DOI: 10.3389/fmars.2024.1151868
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CLOINet: ocean state reconstructions through remote-sensing, in-situ sparse observations and deep learning

Eugenio Cutolo,
Ananda Pascual,
Simon Ruiz
et al.

Abstract: Combining remote-sensing data with in-situ observations to achieve a comprehensive 3D reconstruction of the ocean state presents significant challenges for traditional interpolation techniques. To address this, we developed the CLuster Optimal Interpolation Neural Network (CLOINet), which combines the robust mathematical framework of the Optimal Interpolation (OI) scheme with a self-supervised clustering approach. CLOINet efficiently segments remote sensing images into clusters to reveal non-local correlations… Show more

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