4.5 Article

Spoken emotion recognition using hierarchical classifiers

Journal

COMPUTER SPEECH AND LANGUAGE
Volume 25, Issue 3, Pages 556-570

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.csl.2010.10.001

Keywords

Emotion recognition; Spectral information; Hierarchical classifiers; Hidden Markov Model; Multilayer Perceptron

Funding

  1. Agencia Nacional de Promocion Cientifica y Tecnologica from Argentina
  2. Universidad Nacional de Litoral from Argentina [PAE 37122, PAE-PICT 00052, CAID 012-72]
  3. Universidad Nacional de Entre Rios from Argentina [PID 61111-2, 6107-2]
  4. Consejo Nacional de Investigaciones Cientificas y Tecnicas (CONICET) from Argentina

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The recognition of the emotional state of speakers is a multi-disciplinary research area that has received great interest over the last years. One of the most important goals is to improve the voice-based human machine interactions. Several works on this domain use the prosodic features or the spectrum characteristics of speech signal, with neural networks, Gaussian mixtures and other standard classifiers. Usually, there is no acoustic interpretation of types of errors in the results. In this paper, the spectral characteristics of emotional signals are used in order to group emotions based on acoustic rather than psychological considerations. Standard classifiers based on Gaussian Mixture Models, Hidden Markov Models and Multilayer Perceptron are tested. These classifiers have been evaluated with different configurations and input features, in order to design a new hierarchical method for emotion classification. The proposed multiple feature hierarchical method for seven emotions, based on spectral and prosodic information, improves the performance over the standard classifiers and the fixed features. (C) 2010 Elsevier Ltd. All rights reserved.

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