Exploring Language-Independent Emotional Acoustic Features via Feature Selection.

Authors: Arslan Shaukat, Ke Chen
Subjects: Learning
link: http://arxiv.org/abs/1009.0117
Abstract

We propose a novel feature selection strategy to discover
language-independent acoustic features that tend to be responsible for emotions
regardless of languages, linguistics and other factors. Experimental results
suggest that the language-independent feature subset discovered yields the
performance comparable to the full feature set on various emotional speech
corpora.