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BHATTACHARYYA DISTANCE BASED EMOTIONAL DISSIMILARITY MEASURE FOR EMOTION CLASSIFICATION

机译:基于BHATTACHARYYA的情感分类情感不相似措施

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Speech is one of the most important signals that can be used to detect human emotions. When speech is modulated by different emotions, spectral distribution of speech is changed accordingly. A Gaussian Mixture Model (GMM) can model the changes in spectral distributions effectively. A GMM-supervector characterizes the spectral distribution of an emotion utterance by the GMM parameters such as the mean vectors and covariance matrices. In this paper, we propose to use the GMM-supervectors that characterize the emotional spectral dissimilarity measure for emotion classification. We employ the GMM-SVM kernel with Bhattacharyya based GMM distance to obtain dissimilarity measure. Beside the first-order statistics of mean, we consider dissimilarity measure using second-order statistics of covariance which describe the shape of the distribution. Experiments are conducted using SVM classifier to classify emotions of anger, happiness neutral and sadness. We achieve average accuracy of 78.14% for speaker independent emotion classification.
机译:言论是最重要的信号之一,可以用于检测人类情绪。当语音被不同的情绪调制时,相应地改变语音的光谱分布。高斯混合模型(GMM)可以有效地模拟光谱分布的变化。 GMM监控器表征了GMM参数的情绪发言的光谱分布,例如均值向量和协方差矩阵。在本文中,我们建议使用GMM转储,该转储表征情感分类的情感谱不同措施。我们使用基于Bhattacharyya的GMM-SVM内核的GMM-SVM内核,获得不同的措施。除了平均的一阶统计数据,我们考虑使用描述分布形状的协方差的二阶统计数据的异化措施。使用SVM分类器进行实验,对愤怒,幸福中性和悲伤进行分类。我们实现了扬声器独立情感分类的平均准确性为78.14%。

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