Effectiveness of Sentinel-2 in Multi-Temporal Post-Fire Monitoring When Compared with UAV Imagery
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Joaquim J. Sousa | Luís Pádua | Emanuel Peres | Antônio de Pádua Sousa | Telmo Adão | Nathalie Guimarães | T. Adão | Nathalie Guimarães | J. Sousa | A. Sousa | L. Pádua | Emanuel Peres
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