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Estimation of Above-Ground Mangrove Biomass Using Landsat-8 Data- Derived Vegetation Indices: A Case Study in Quang Ninh Province, Vietnam
Corresponding Author(s) : Hai-Hoa Nguyen
Forest and Society,
Vol. 5 No. 2 (2021): NOVEMBER
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