Title :
Canonical Analysis for Increased Classification Speed and Channel Selection
Author_Institution :
Aerospace Systems Division, Lockheed Electronics Company, Houston, TX 77058
Abstract :
The quadratic form can be expressed as a monotonically increasing sum of squares when the inverse covariance matrix is represented in canonical form. This formulation has the advantage that, in testing a particular class hypothesis, computations can be discontinued when the partial sum exceeds the smallest value obtained for other classes already tested. A method for channel selection is presented which arranges the original input measurements in that order which minimizes the expected number of computations. The classification algorithm was tested on data from LARS Flight Line Cl and found to reduce the sum-of-products operations by a factor of 6.7 compared to the conventional approach. In effect, the accuracy of a twelve-channel classification was achieved using only that CPU time required for a conventional four-channel classification.
Keywords :
Application software; Covariance matrix; Data mining; Geoscience; Laboratories; Multispectral imaging; Probability density function; Remote sensing; Testing; Time measurement;
Journal_Title :
Geoscience Electronics, IEEE Transactions on
DOI :
10.1109/TGE.1976.294461