Reconocimiento automático de emociones utilizando parámetros prosódicos

  1. Luengo Gil, Iker
  2. Navas Cordón, Eva
  3. Hernáez Rioja, Inmaculada
  4. Sánchez de la Fuente, Jon
Revue:
Procesamiento del lenguaje natural

ISSN: 1135-5948

Année de publication: 2005

Número: 35

Pages: 13-20

Type: Article

D'autres publications dans: Procesamiento del lenguaje natural

Résumé

This paper presents the experiments made to automatically identify emotion in an emotional speech database for Basque. Three different classifiers have been built: one using spectral features and GMM, other with prosodic features and SVM and the last one with prosodic features and GMM. 86 prosodic features were calculated and then an algorithm to select the most relevant ones was applied. The first classifier gives the best result with a 98.4% accuracy when using 512 mixtures, but the classifier built with the best 6 prosodic features achieves an accuracy of 92.3% in spite of its simplicity, showing that prosodic information is very useful to identify emotions