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Predicting grain yield using canopy hyperspectral reflectance in wheat breeding data.

Osval A Montesinos-LópezAbelardo Montesinos-LópezJosé CrossaGustavo de Los CamposGregorio AlvaradoMondal SuchismitaJessica RutkoskiLorena González-PérezJuan A Burgueño
Published in: Plant methods (2017)
We found that using all bands simultaneously increased prediction accuracy more than using VI alone. The Splines and Fourier models had the best prediction accuracy for each of the nine time-points under study. Combining image data collected at different time-points led to a small increase in prediction accuracy relative to models that use data from a single time-point. Also, using bands with heritabilities larger than 0.5 only in Drought as predictor variables showed improvements in prediction accuracy.
Keyphrases
  • electronic health record
  • big data
  • heat stress
  • plant growth