Home // International Journal On Advances in Life Sciences, volume 2, numbers 1 and 2, 2010 // View article
Classification on Speech Emotion Recognition - A Comparative Study
Authors:
Theodoros Iliou
Christos-Nikolaos Anagnostopoulos
Keywords: Emotion Recognition , Artificial Neural Networks, Support Vector Machine, speech processing.
Abstract:
In this paper we present a comparative analysis of four classifiers for speech signal emotion recognition. Recognition was performed on emotional Berlin Database. This work focuses on speaker and utterance (phrase) dependent and independent framework. One hundred thirty three (133) sound/speech features have been extracted from Pitch, Mel Frequency Cepstral Coefficients, Energy and Formants. These features have been evaluated in order to create a set of 26 features, sufficient to discriminate between seven emotions in acted speech. Multilayer Percepton, Random Forest, Probabilistic Neural Networks and Support Vector Machine were used for the Emotion Classification at seven classes namely anger, happiness, anxiety/fear, sadness, boredom, disgust and neutral. In the speaker dependent framework, Probabilistic Neural Network reaches very high accuracy(94%), while in the speaker independent framework the classification rate of the Support Vector Machine reaches 80%. The results of numerical experiments are given and discussed in the paper.
Pages: 18 to 28
Copyright: Copyright (c) to authors, 2010. Used with permission.
Publication date: September 5, 2010
Published in: journal
ISSN: 1942-2660