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Improving Chlorophyll-a Estimation from Sentinel-2 (MSI) in the Barents Sea using Machine Learning

Permanent lenke
https://hdl.handle.net/10037/21863
DOI
https://doi.org/10.1109/JSTARS.2021.3074975
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Åpne
article.pdf (11.18Mb)
Publisert versjon (PDF)
Dato
2021-04-22
Type
Journal article
Tidsskriftartikkel
Peer reviewed
Forfatter
Asim, Muhammad; Brekke, Camilla; Mahmood, Arif; Eltoft, Torbjørn; Reigstad, Marit
Sammendrag
This article addresses methodologies for remote sensing of ocean Chlorophyll-a (Chl-a), with emphasis on the Barents Sea. We aim at improving the monitoring capacity by integrating in situ Chl-a observations and optical remote sensing to locally train machine learning (ML) models. For this purpose, in situ measurements of Chl-a ranging from 0.014–10.81 mg/m 3 , collected for the years 2016–2018, were used to train and validate models. To accurately estimate Chl-a, we propose to use additional information on pigment content within the productive column by matching the depth-integrated Chl-a concentrations with the satellite data. Using the optical images captured by the multispectral imager instrument on Sentinel-2 and the in situ measurements, a new spatial window-based match-up dataset creation method is proposed to increase the number of match-ups and hence improve the training of the ML models. The match-ups are then filtered to eliminate erroneous samples based on the spectral distribution of the remotely sensed reflectance. In addition, we design and implement a neural network model dubbed as the ocean color net (OCN), that has performed better than existing ML-based techniques, including the Gaussian process Regression (GPR), regionally tuned empirical techniques, including the ocean color (OC3) algorithm and the spectral band ratios, as well as the globally trained Case-2 regional/coast colour (C2RCC) processing chain model C2RCC-networks. The proposed OCN model achieved reduced mean absolute error compared to the GPR by 5.2%, C2RCC by 51.7%, OC3 by 22.6%, and spectral band ratios by 29%. Moreover, the proposed spatial window and depth-integrated match-up creation techniques improved the performance of the proposed OCN by 57%, GPR by 41.9%, OC3 by 5.3%, and spectral band ratio method by 24% in terms of RMSE compared to the conventional match-up selection approach.
Er en del av
Asim, M. (2023). Optical remote sensing of water quality parameters retrieval in the Barents Sea. (Doctoral thesis). https://hdl.handle.net/10037/28787.
Forlag
Institute of Electrical and Electronics Engineers (IEEE)
Sitering
Asim M, Brekke C, Mahmood A, Eltoft T, Reigstad M. Improving Chlorophyll-a Estimation from Sentinel-2 (MSI) in the Barents Sea using Machine Learning. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing. 2021
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  • Artikler, rapporter og annet (fysikk og teknologi) [1061]
Copyright 2021 The Author(s)

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