Using Ridge Regression Models to Estimate Grain Yield from Field Spectral Data in Bread Wheat (Triticum Aestivum L.) Grown under Three Water Regimes
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Javier Hernandez | Mauricio Galleguillos | Alejandro del Pozo | Iván Matus | Gustavo A. Lobos | Paola Silva | M. Galleguillos | A. Pozo | G. Lobos | I. Matus | Paola Silva | Javier Hernandez
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