G. Zhao et Al. Maclean, A comparison of canonical discriminant analysis and principal component analysis for spectral transformation, PHOTOGR E R, 66(7), 2000, pp. 841-847
A study was conducted in Michigan's Upper Peninsula to test the strength an
d weakness of canonical discriminant analysis (CDA) as a spectral transform
ation technique to separate ground scene classes which have close spectral
signatures. Classification accuracies using CDA transformed images were com
pared to those using principal component analysis (PCA) transformed images.
Results showed that Kappa accuracies using CDA images were significantly h
igher than those derived using PCA at alpha = 0.05. Comparison of CDA and P
CA eigen structure matrices indicated that there is no distinct pattern in
terms of source variable contributions and load signs between the canonical
discriminant functions and the principal components.