Optimal attributes for the object based detection of giant reed in riparian habitats: A comparative study between Airborne High Spatial Resolution and WorldView-2 imagery
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José M. C. Pereira | Maria Rosário Fernandes | Francisca C. Aguiar | João M. N. Silva | Maria Teresa Ferreira | João M. N. Silva | J. Pereira | M. T. Ferreira | M. R. Fernandes | F. Aguiar
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