Title :
Dimensionality Reduction for Emotional Speech Recognition
Author :
Fewzee, Pouria ; Karray, Fakhri
Author_Institution :
Centre for Pattern Anal. & Machine Intell., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
The number of speech features that are introduced to emotional speech recognition exceeds some thousands and this makes dimensionality reduction an inevitable part of an emotional speech recognition system. The elastic net, the greedy feature selection, and the supervised principal component analysis are three recently developed dimensionality reduction algorithms that we have considered their application to tackle this issue. Together with PCA, these four methods include both supervised and unsupervised, as well as filter and projection-type dimensionality reduction methods. For experimental reasons, we have chosen VAM corpus. We have extracted two sets of features and have investigated the efficiency of the application of the four dimensionality reduction methods to the combination of the two sets, besides each of the two. The experimental results of this study show that in spite of a dimensionality reduction stage, a longer vector of speech features does not necessarily result in a more accurate prediction of emotion.
Keywords :
data reduction; emotion recognition; feature extraction; greedy algorithms; principal component analysis; speech recognition; PCA; VAM corpus; dimensionality reduction stage; elastic net; emotional speech recognition system; filter-type dimensionality reduction methods; greedy feature selection; projection-type dimensionality reduction methods; speech features; supervised principal component analysis; Accuracy; Databases; Feature extraction; Principal component analysis; Speech; Speech recognition; Vectors; Dimensionality Reduction; Emotional Speech Recognition;
Conference_Titel :
Privacy, Security, Risk and Trust (PASSAT), 2012 International Conference on and 2012 International Confernece on Social Computing (SocialCom)
Conference_Location :
Amsterdam
Print_ISBN :
978-1-4673-5638-1
DOI :
10.1109/SocialCom-PASSAT.2012.83