Use of VIS-NIR-SWIR spectroscopy for the prediction of water status in soybean plants in the Colombian Piedmont Plains
Uso de la espectroscopia Vis NIR-SWIR para la predicción del estado hídrico de las plantas de soya en el Piedemonte Llanero Colombiano
DOI:
https://doi.org/10.15446/dyna.v86n210.78703Palabras clave:
hyperspectral, discriminant analysis, water deficit, soybean (en)hiperespectral, análisis discriminante, déficit hídrico, soya (es)
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