An optical radiation measurement system, which measures reflectance spectra
from 400 to 2000 nm, was used to quantify single wheat kernel color Six cl
asses of wheat were used for this study. A neural network (NN) using input
data dimension reduction by divergence feature selection and by principal c
omponent analysis was used to determine single wheat kernel color class. Th
e highest classification accuracy was 98.8% when the divergence feature sel
ection method was used to reduce the number of NN inputs. The highest class
ification accuracy was 98% when principal component analysis method was use
d to reduce the number of NN inputs.