WaterNet: A Convolutional Neural Network for Chlorophyll-a Concentration Retrieval
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Chao-Hung Lin | Muhammad Aldila Syariz | Manh Van Nguyen | Lalu Muhamad Jaelani | Ariel C. Blanco | Chao-Hung Lin | A. Blanco | M. A. Syariz | M. V. Nguyen
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