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Artefact Determination by GMM-Based Continuous Detection of Emotional Changes in Synthetic Speech

机译:基于GMM的连续语音合成语音情感变化的伪影确定

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The paper is focused on a description of a system for automatic detection of speech artefacts based on the Gaussian mixture model (GMM) classifier. The system enables to detect one or more artefacts in synthetic speech produced by a text-to-speech system. Our speech artefact detection uses continual GMM classification of emotional states in 2-D affective space of valence and arousal within the whole sentence and calculates the final change in the evaluated emotions. The detected shift to negative emotions indicates presence of an artefact in the analysed sentence. The basic experiments confirm functionality of the developed system producing results with sufficient correctness of artefact detection. These results are comparable to those attained by a standard listening test method. Additional investigations show relatively great influence of the number of mixtures, the number of used emotional classes, and types of speech features on the evaluated emotional shift.
机译:本文着重介绍基于高斯混合模型(GMM)分类器的语音伪像自动检测系统。该系统能够检测文本到语音系统产生的合成语音中的一个或多个伪像。我们的语音伪像检测使用整个句子中的价和唤醒二维情感空间中的情感状态的连续GMM分类,并计算评估的情感的最终变化。检测到的向负面情绪的转变指示在分析的句子中存在伪像。基础实验证实了开发的系统的功能性,该系统产生的结果具有足够的伪像检测正确性。这些结果与通过标准听力测试方法获得的结果相当。额外的调查显示,混合的数量,使用的情绪类别的数量以及语音特征的类型对评估的情绪变化有较大的影响。

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