基于普通话语音信号的情感识别

T. Pao, Yu-Te Chen, Jun-Heng Yeh
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引用次数: 18

摘要

本文提出了一种基于普通话语音的情感分类方法。五种主要的人类情绪包括愤怒、无聊、快乐、中性和悲伤。在语音信号的情感分类中,常用的特征是基频、响度、持续时间和语音质量的统计。然而,当调用两个以上的效价情绪类别时,使用这些特征的系统的识别准确性会大大降低。对于语音情感识别,我们选择16个LPC系数、12个LPCC分量、16个LFPC分量、16个PLP系数、20个MFCC分量和抖动作为基本特征组成特征向量。使用12名非专业讲者录制的普通话语料库。本文提出的识别器是基于三种识别技术:LDA、K-NN和hmm。实验结果表明,所选特征不仅在唤醒维度上,而且在效价维度上都具有鲁棒性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emotion recognition from Mandarin speech signals
In this paper, a Mandarin speech based emotion classification method is presented. Five primary human emotions including anger, boredom, happiness, neutral and sadness are investigated. In emotion classification of speech signals, the conventional features are statistics of fundamental frequency, loudness, duration and voice quality. However, the recognition accuracy of systems employing these features degrades substantially when more than two valence emotion categories are invoked. For speech emotion recognition, we select 16 LPC coefficients, 12 LPCC components, 16 LFPC components, 16 PLP coefficients, 20 MFCC components and jitter as the basic features to form the feature vector. A Mandarin corpus recorded by 12 non-professional speakers is employed. The recognizer presented in this paper is based on three recognition techniques: LDA, K-NN, and HMMs. Experimental results show that the selected features are robust and effective for emotion recognition, not only in the arousal dimension but also in the valence dimension.
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