It is common practice to apply linear or nonlinear feature extraction
methods before classification. Usually linear methods are faster
and simpler than nonlinear ones but an idea successfully employed
in the nonlinearization of Support Vector Machines permits a simple
and effective extension of several statistical methods to their
nonlinear counterparts. In this paper we follow this general nonlinearization
approach in the context of Independent Component Analysis, which
is a general purpose statistical method for blind source separation
and feature extraction. In addition, nonlinearized formulae are
furnished along with an illustration of the usefulness of the
proposed method as an unsupervised feature extractor for the classification
of Hungarian phonemes.