Assessment of potato late blight from UAV-based multispectral imagery
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Flavio Prieto | Ivan Lizarazo | Victor Daniel Angulo Morales | Jorge Rodríguez | F. Prieto | I. Lizarazo | V. A. Morales | Jorge Rodríguez
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