Robust Texture Recognition Using Credal Classifiers
Author(s) -
Giorgio Corani,
Alessandro Giusti,
Davide Migliore,
Juergen Schmidhuber
Publication year - 2010
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.24.78
Subject(s) - artificial intelligence , classifier (uml) , computer science , naive bayes classifier , pattern recognition (psychology) , class (philosophy) , contextual image classification , machine learning , image (mathematics) , support vector machine
Texture classification is used for many vision systems; in this paper we focus on improving the reliability of the classification through the so-called imprecise (or credal) classifiers, which suspend the judgment on the doubtful instances by returning a set of classes instead of a single class. Our view is that on critical instances it is more sensible to return a reliable set of classes rather than an unreliable single class. We compare the traditional naive Bayes classifier (NBC) against its imprecise counterpart, the naive credal classifier (NCC); we consider a standard classification dataset, when the problem is made progressively harder by introducing different image degradations or by providing smaller training sets. Experiments show that on the instances for which NCC returns more classes, NBC issues in fact unreliable classifications; the indeterminate classifications of NCC preserve reliability but at the same time also convey significant information, reducing the set of possible classes (on most critical instances) from 24 to some 2-3.
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