Deforestation Detection with Fully Convolutional Networks in the Amazon Forest from Landsat-8 and Sentinel-2 Images
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Raul Queiroz Feitosa | José Marcato Junior | D. L. Torres | Javier Noa Turnes | Daliana Lobo Torres | Pedro Juan Soto Vega | Claudio Almeida | Daniel E. Silva | R. Feitosa | J. M. Junior | C. Almeida | D. Silva | J. N. Turnes | P. J. S. Vega
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