Semi-Automatic Methodology for Fire Break Maintenance Operations Detection with Sentinel-2 Imagery and Artificial Neural Network
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Rita Almeida Ribeiro | André Mora | João M. N. Silva | José M. Fonseca | João E. Pereira-Pires | Valentine Aubard | João M. N. Silva | A. Mora | J. Fonseca | Valentine Aubard
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