We present in this paper a new multi-class Bayes classifier that permits using separate feature vectors, chosen specifically for each class. This technique extends previous work on feature Class Specific Classifier to kernel methods, using a new class of Gibbs probability distributions with nonlinear kernel mapping as energy function. The resulting method, that we call Kernel Class Specific Classifier, permits using a different kernel and a different feature set for each class. Moreover, the proper kernel for each class can be learned by the training data with a leave-one-out technique. This removes the ambiguity regarding the proper choice of the feature vectors for a given class. Experiments on appearance-based object recognition show the power of the proposed approach.

To each according to its need: kernel class specific classifier / Caputo, Barbara; Niemann, H.. - STAMPA. - 16:(2002), pp. 94-97.

To each according to its need: kernel class specific classifier

CAPUTO, BARBARA;
2002

Abstract

We present in this paper a new multi-class Bayes classifier that permits using separate feature vectors, chosen specifically for each class. This technique extends previous work on feature Class Specific Classifier to kernel methods, using a new class of Gibbs probability distributions with nonlinear kernel mapping as energy function. The resulting method, that we call Kernel Class Specific Classifier, permits using a different kernel and a different feature set for each class. Moreover, the proper kernel for each class can be learned by the training data with a leave-one-out technique. This removes the ambiguity regarding the proper choice of the feature vectors for a given class. Experiments on appearance-based object recognition show the power of the proposed approach.
2002
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
To each according to its need: kernel class specific classifier / Caputo, Barbara; Niemann, H.. - STAMPA. - 16:(2002), pp. 94-97.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/950646
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