Hidden Markov model-based speech emotion recognition

Björn Schuller, G. Rigoll, M. Lang
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引用次数: 618

Abstract

In this contribution we introduce speech emotion recognition by use of continuous hidden Markov models. Two methods are propagated and compared throughout the paper. Within the first method a global statistics framework of an utterance is classified by Gaussian mixture models using derived features of the raw pitch and energy contour of the speech signal. A second method introduces increased temporal complexity applying continuous hidden Markov models considering several states using low-level instantaneous features instead of global statistics. The paper addresses the design of working recognition engines and results achieved with respect to the alluded alternatives. A speech corpus consisting of acted and spontaneous emotion samples in German and English language is described in detail. Both engines have been tested and trained using this equivalent speech corpus. Results in recognition of seven discrete emotions exceeded 86% recognition rate. As a basis of comparison the similar judgment of human deciders classifying the same corpus at 79.8% recognition rate was analyzed.
基于隐马尔可夫模型的语音情感识别
在这篇贡献中,我们引入了使用连续隐马尔可夫模型的语音情感识别。本文对两种方法进行了推广和比较。在第一种方法中,利用语音信号的原始音高和能量轮廓的衍生特征,通过高斯混合模型对话语的全局统计框架进行分类。第二种方法采用连续隐马尔可夫模型,考虑使用低级瞬时特征而不是全局统计的几种状态,从而增加了时间复杂度。本文讨论了工作识别引擎的设计和所取得的结果。详细描述了一个由德语和英语两种语言的行为情绪和自发情绪样本组成的语音语料库。这两个引擎都已经使用这个等效的语音语料库进行了测试和训练。结果对7种离散情绪的识别率超过86%。作为比较的基础,分析了人类决策者对同一语料库的相似判断,识别率为79.8%。
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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