基于最小互相关准则的语音情感多层次特征选择

Tatjana Liogiene, G. Tamulevicius
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引用次数: 4

摘要

语音情感识别问题通常是通过提供一个包含数千个不同特征的庞大特征集来处理的。这可能会引发“维度诅咒”问题,降低语音情感分类过程。在本文中,我们提出了基于最小互相关的多层次特征的形成,用于语音情感分类。特征集以最精确的特征初始化,并通过选择线性无关的特征进行扩展。对该特征集形成技术进行了实验测试,并与使用预定义特征集的直接分类方法进行了比较。结果表明,我们提出的技术在各种情绪集和分类设置上的优势为5-25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Minimal cross-correlation criterion for speech emotion multi-level feature selection
The problem of speech emotion recognition commonly is dealt with by delivering a huge feature set containing up to a few thousands different features. This can raise the “curse of dimensionality” problem and downgrade speech emotion classification process. In this paper we present minimal cross-correlation based formation of multi-level features for speech emotion classification. The feature set is initialized with most accurate feature and is expanded by selecting linearly independent features. This feature set formation technique was tested experimentally and compared with straightforward classification using predefined feature set. Results show superiority of our proposed technique by 5-25% for various emotion sets and classification settings.
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