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ICIP
2005
IEEE

Feature selection with nonparametric statistics

14 years 6 months ago
Feature selection with nonparametric statistics
In this paper we discuss a general framework for feature selection based on nonparametric statistics. The three stage approach we propose is based on the assumption that the available data set is representative of a certain concept and aims at learning from the data the selection of a subset of descriptive features out of a large pool of measurements. The first stage requires the computation of a large number of image features. Simple significance tests and the maximum likelihood principle are at the basis of the second stage in which a saliency measure is used to reject the features which do not appear to be descriptive of the given data set. The third and final stage, by using the Spearman independence rank test, selects a maximal number of pairwise independent features. We report experiments on a face dataset (the MITCBCL database) which confirm the quality and the potential of the approach.
Emanuele Franceschi, Francesca Odone, Fabrizio Sme
Added 23 Oct 2009
Updated 27 Oct 2009
Type Conference
Year 2005
Where ICIP
Authors Emanuele Franceschi, Francesca Odone, Fabrizio Smeraldi, Alessandro Verri
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