A simple upper bound to the Bayes error probability for feature selection

Citation
L. Bruzzone et Sb. Serpico, A simple upper bound to the Bayes error probability for feature selection, KYBERNETIKA, 34(4), 1998, pp. 387-392
Citations number
6
Categorie Soggetti
AI Robotics and Automatic Control
Journal title
KYBERNETIKA
ISSN journal
00235954 → ACNP
Volume
34
Issue
4
Year of publication
1998
Pages
387 - 392
Database
ISI
SICI code
0023-5954(1998)34:4<387:ASUBTT>2.0.ZU;2-X
Abstract
In this paper, feature selection in multiclass cases for classification of remote-sensing images is addressed. A criterion based on a simple upper bou nd to the error probability of the Bayes classifier for the minimum error i s proposed. This criterion has the advantage of selecting features having a link with the error probability with a low computational load. Experiments have been carried out in order to compare the performances provided by the proposed criterion with the ones of some of the widely used feature-select ion criteria presented in the remote-sensing literature. These experiments confirm the effectiveness of the proposed criterion, which performs slightl y better than all the others considered in the paper.