Local discriminant bases, (with R. R. Coifman), Wavelet Applications in Signal and Image Processing II (A. F. Laine and M. A. Unser, eds.), Proc. SPIE 2303, pp. 2-14, Jul. 1994, San Diego, CA.
Abstract
We describe an extension to the "best-basis" method to construct an
orthonormal basis which maximizes a class separability for signal
classification problems. This algorithm reduces the dimensionality of these
problems by using basis functions which are well localized in time-frequency
plane as feature extractors. We tested our method using two synthetic
datasets: extracted features (expansion coefficients of input signals in these
basis functions), supplied them to the conventional pattern classifiers,
then computed the misclassification rates. These examples show the superiority
of our method over the direct application of these classifiers on the input
signals. As a further application, we also describe a method to extract
signal component from data consisting of signal and textured background.
Keywords: wavelet packets, local trigonometric transforms, classification, feature extraction, dimensionality reduction, linear discriminant analysis,
classification and regression trees
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