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Emotional speech discrimination using sub-segmental acoustic features

机译:使用子分段声学特征的情绪语音歧视

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The ability to express emotions is a natural trait of humans. Machines or robots do not have that ability, so far. The synthesized speech signals, that machines use currently, lack naturalness, primarily because those do not convey any emotions and hence sound flat or artificial to human ears. Automatic emotion recognition from the speech signal has also been a big challenge to researchers in speech signal processing domain. In this paper, changes in the discriminating features are analyzed for 6 different emotions: anger, fear, happiness, surprise, sadness and neutral. The sub-segmental features F0, Strength of Excitation and Signal Energy are derived directly from the emotional speech signal, for discriminating amongst these emotions. Signal processing methods autocorrelation of linear prediction (LP) residual, zero-frequency filtering and signal energy are used for deriving these features. The analysis is carried out using two emotion databases, namely German Emotion Database and Telugu Emotion Database. Emotional speech data, for a total of 10 speakers (5 male and 5 female speakers) is examined from each database. Performance evaluation results of using these features for discriminating amongst the 6 emotions are encouraging. These discriminating features and this study should be helpful further towards automatic detection and classification of these different emotions.
机译:表达情绪的能力是人类的自然特征。到目前为止,机器人或机器人没有这种能力。该机器目前使用的合成语音信号缺乏自然,主要是因为那些不会传达任何情绪,因此声音平坦或人为对人类的耳朵。来自语音信号的自动情感识别对语音信号处理域中的研究人员来说也是一个很大的挑战。在本文中,分析了判别特征的变化6种不同的情绪:愤怒,恐惧,幸福,惊喜,悲伤和中立。子分段特征F0,激励强度和信号能量直接从情绪语音信号导出,以辨别这些情绪。信号处理方法线性预测(LP)残差的自相关,零频率滤波和信号能量用于导出这些特征。分析是使用两个情感数据库,即德国情感数据库和泰卢语情情节数据库进行的。情绪语音数据,总共有10个扬声器(5名男性和5名女性扬声器)是从每个数据库中检查的。使用这些特征来辨别6个情绪的性能评估结果是令人鼓舞的。这些歧视特征和本研究应该有助于进一步探讨这些不同情绪的自动检测和分类。

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