Discovered changes in rice occupation with satellite images based on random forest approach

Although agricultural production contributed a significant share of Vietnam's total production, the advancement and proficiency of remote sensing are still narrowly applied in this sector. Recent years, by the open access to satellite products of sufficient characteristics, the agriculture with satellite images supporting is being boosted. This paper focuses on identifying land use and its long-term changes in the selected regions of the Mekong Delta.

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