Pn. Penchev et al., Automatic classification of infrared spectra using a set of improved expert-based features, ANALYT CHIM, 388(1-2), 1999, pp. 145-159
Three types of spectral features derived from infrared peak tables were com
pared for their ability to be used in automatic classification of infrared
spectra. Aim of classification was to provide information about presence or
absence of 20 chemical substructures in organic compounds. A new method ha
s been applied to improve spectral wavelength intervals as available from e
xpert-knowledge. The resulting set of features proved to be better than fea
tures derived from the original intervals and better than features directly
derived from peak tables. The methods used for classification were linear
discriminant analysis and a back-propagation neural network; the latter gav
e a better performance of the developed classifiers. (C) 1999 Elsevier Scie
nce B.V. All rights reserved.