extracting effective classification features from original pattern signals is very important.But
for a great number of non-stationary or time-varying signals
such as speech
radar
earthquake signals
etc.
classification features are often localized both in time and frequency
so thus extracting effective features from them by general transformation methods is very difficult.Wavelet packet transform can provides an arbitrary time-frequency decomposition for the signals
because a wavelet packet library contains many wavelet packet bases
which can handle the different components of a signal.Therefore
by selecting a suitable basis
the effective features can be extracted.This paper is mainly concerned with extracting effective features from the recognized or classified signals by selecting wavelet packet basis via given training sample sets.Three separability criteria
i.e.
distance criterion
divergence criterion and entropy criterion
are used for selecting the best basis.The performance of features extraction by wavelet packet transform is compared with that by wavelet transform through experiments.