Estimating aboveground biomass of a mangrove plantation on the Northern coast of Vietnam using machine learning techniques with an integration of ALOS-2 PALSAR-2 and Sentinel-2A data
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Dieu Tien Bui | Tien Dat Pham | Kunihiko Yoshino | Nga Nhu Le | D. Bui | T. Pham | K. Yoshino | N. N. Le
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