On the use of pitch-based features for fear emotion detection from speech

Safa Chebbi, S. B. Jebara
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引用次数: 11

Abstract

In this paper, we present a study that aims to evaluate the effect of pitch-related features on fear emotion detection from speech signal. In this context, several features have been tested. Only relevant ones are selected thanks to ANOVA tests. Next, they were decorrelated using principal component analysis. To select fear, emotion classification based on machine learning methods is used to extract fear from other emotions. Many classification tools are used and compared. We considered two types of emotion classification which highlights the fear emotion state, a simple classification as well as an hierarchical one. Results show that selected pitch-based features have a relatively great power in fear recognition. In fact, the highest accuracy rate reaches 78.7% using k-nearest neighbors algorithm.
基于音高的特征在语音恐惧情绪检测中的应用
本研究旨在探讨音调相关特征对语音信号中恐惧情绪检测的影响。在这种情况下,已经测试了几个特性。通过方差分析,只选择相关的数据。接下来,它们使用主成分分析去相关。为了选择恐惧,使用基于机器学习方法的情绪分类从其他情绪中提取恐惧。使用和比较了许多分类工具。我们考虑了两种强调恐惧情绪状态的情绪分类,一种是简单分类,另一种是层次分类。结果表明,选择的基于音高的特征在恐惧识别中具有较大的功效。事实上,使用k近邻算法,准确率最高达到78.7%。
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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