Remote Sensing Applications in Sugarcane Cultivation: A Review
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Clement Atzberger | Emma Izquierdo-Verdiguier | Markus Immitzer | Francesco Vuolo | Jaturong Som-ard | E. Izquierdo-Verdiguier | C. Atzberger | F. Vuolo | Markus Immitzer | J. Som-ard | Jaturong Som-ard
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