Developing a New Machine-Learning Algorithm for Estimating Chlorophyll-a Concentration in Optically Complex Waters: A Case Study for High Northern Latitude Waters by Using Sentinel 3 OLCI
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Katalin Blix | Philippe Massicotte | Juan Li | Atsushi Matsuoka | P. Massicotte | A. Matsuoka | Juan Li | K. Blix
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