Vegetation Fraction Images Derived from PROBA-V Data for Rapid Assessment of Annual Croplands in Brazil
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Yosio Edemir Shimabukuro | Edson Eyji Sano | Andeise Cerqueira Dutra | Egidio Arai | Henrique Luis Godinho Cassol | Tânia Beatriz Hoffmann | Y. Shimabukuro | E. Arai | E. Sano | A. C. Dutra | H. Cassol | T. B. Hoffmann
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