普通话语音中的情绪检测

T. Pao, Yu-Te Chen, Jun-Heng Yeh, Wen-Yuan Liao
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引用次数: 40

摘要

随着语音接口在人机交互应用中的作用越来越大,自动识别人类语音中的情绪的重要性也越来越大。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,进行了调查。结合不同的特征流来获得更准确的结果是一种众所周知的统计技术。在语音情感识别中,我们将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。使用了两个语料库。本文提出的识别器是基于三种分类技术:LDA、K-NN和hmm。结果表明,所选特征在两种语料库的效价和觉醒维度上都具有鲁棒性和有效性。采用hmm情绪分类方法,平均准确率达到88.7%。
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Detecting Emotions in Mandarin Speech
The importance of automatically recognizing emotions in human speech has grown with the increasing role of spoken language interfaces in human-computer interaction applications. 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. Combining different feature streams to obtain a more accurate result is a well-known statistical technique. For speech emotion recognition, we combined 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. Two corpora were employed. The recognizer presented in this paper is based on three classification techniques: LDA, K-NN and HMMs. Results show that the selected features are robust and effective for the emotion recognition in the valence and arousal dimensions of the two corpora. Using the HMMs emotion classification method, an average accuracy of 88.7% was achieved.
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