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Automatic emotion recognition using auditory and prosodic indicative features

机译:使用听觉和韵律指示特征进行自动情感识别

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In this paper, a new framework for the automatic recognition of human emotions from speech was proposed. Besides auditory indicative features, selected prosodic and voice quality parameters were optimally combined with Mel frequency coefficients to perform an automatic emotion classification. For this purpose, the Emotion Prosody Speech and Transcript database, a certified speech corpus, was used throughout this study. An extensive set of experiments have been carried out in order to assess the effectiveness of this original mixture of prosodic, perceptual and auditory features to perform the emotion recognition task. These features were selected by using Linear Discriminant Analysis (LDA) and Principal Component Analysis (PCA) on the basis of their ability of discrimination. The selected features were used by the front-end processing stage of a hybrid Gaussian Mixture Model and Support Vector Machines (GSVMs) to perform the emotion classification. The results showed the effectiveness of the proposed feature extraction framework to discriminate between different human emotions when the LDA-PCA-GSVM classifier was used.
机译:本文提出了一种从语音中自动识别人的情绪的新框架。除了听觉指示特征外,还将选定的韵律和语音质量参数与梅尔频率系数进行最佳组合,以执行自动情感分类。为此,在整个研究过程中使用了情绪韵律语音和成绩单数据库(一种经过认证的语音语料库)。为了评估这种韵律,感知和听觉特征的原始混合物执行情感识别任务的有效性,已经进行了广泛的实验。这些特征是根据它们的区分能力,使用线性判别分析(LDA)和主成分分析(PCA)进行选择的。混合高斯混合模型和支持向量机(GSVM)的前端处理阶段使用选定的功能来执行情感分类。结果表明,当使用LDA-PCA-GSVM分类器时,所提出的特征提取框架能够区分不同的人类情绪。

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