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"Spectral Model for Soybean Yield Estimate Using MODIS/EVI Data"
written by Anibal Gusso, Jorge Ricardo Ducati, Mauricio Roberto Veronez, Damien Arvor, Luiz Gonzaga da Silveira ,
published by International Journal of Geosciences, Vol.4 No.9, 2013
has been cited by the following article(s):
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[11]
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[12]
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[13]
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[15]
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[17]
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[18]
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