Analysis of high-level features for vocal emotion recognition

H. Atassi, A. Esposito, Z. Smékal
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引用次数: 19

Abstract

The paper deals with the vocal emotion recognition which is a very important task for several applications in the field of human-machine interaction. There is a plenty of algorithms proposed up to date for this purpose that exploit different types of features and classifiers. Our previous work showed that high-level features perform very well in terms of emotion classification from speech. However, little attention has been paid so far to the statistical analysis of these features. For this reason the presented paper mainly focuses on the emotion recognition by using only high-level features. Two different emotional speech corpora were exploited in our experiments, namely the Berlin Database of Emotional Speech and the COST2102 Italian Database of Emotional Speech. Results showed that the best high-level features in terms of high discriminative power strongly differ among the databases considered on the first hand and among the emotions within each database on the second hand.
语音情感识别的高级特征分析
语音情感识别是人机交互领域中一个非常重要的问题。为了这个目的,目前已经提出了很多算法,这些算法利用了不同类型的特征和分类器。我们之前的工作表明,高级特征在语音情感分类方面表现非常好。然而,迄今为止,对这些特征的统计分析很少受到重视。因此,本文主要关注仅使用高级特征的情感识别。在我们的实验中使用了两个不同的情绪语音语料库,即柏林情绪语音数据库和COST2102意大利情绪语音数据库。结果表明,高判别能力的最佳高级特征在不同的第一手数据库和不同的第二手数据库之间存在显著差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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