Evaluating the potential of freely available multispectral remotely sensed imagery in mapping American bramble (Rubus cuneifolius)
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Onisimo Mutanga | John Odindi | Perushan Rajah | O. Mutanga | J. Odindi | Perushan. Rajah | Perushan Rajah
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