Classification of acoustic events using SVM-based clustering schemes
Fitxers
Títol de la revista
ISSN de la revista
Títol del volum
Col·laborador
Editor
Tribunal avaluador
Realitzat a/amb
Tipus de document
Data publicació
Editor
Condicions d'accés
item.page.rightslicense
Publicacions relacionades
Datasets relacionats
Projecte CCD
Abstract
Acoustic events produced in controlled environments may carry information useful for perceptually aware interfaces. In this paper we focus on the problem of classifying 16 types of meeting-room acoustic events. First of all, we have defined the events and gathered a sound database. Then, several classifiers based on support vector machines (SVM) are developed using confusion matrix based clustering schemes to deal with the multi-class problem. Also, several sets of acoustic features are defined and used in the classification tests. In the experiments, the developed SVM-based classifiers are compared with an already reported binary tree scheme and with their correlative. Gaussian mixture model (GMM) classifiers. The best results are obtained with a tree SVM-based classifier that may use a different feature set at each node. With it, a 31.5% relative average error reduction is obtained with respect to the best result from a conventional binary tree scheme.

