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Vocal tract spectrum transformation based on clustering in voice conversion system

机译:语音转换系统中基于聚类的声谱变换

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By the conventional vocal tract spectrum transformation based on Gaussian Mixture Model (GMM), the transformation rule is not very accurate because of the large amount of voice data which is time-varying and non-stationary. This paper mainly studies a method of spectrum transformation based on clustering algorithm. First of all, the training data are classified into several clusters and each cluster is trained relatively to get a more accurate transformation rule. And in the stage of transformation, the source parameters of each frame are classified into one cluster, and then are converted by the transformation rule of that cluster. In this paper, K-means algorithm is used as the clustering method to classified data. Experiment results show that proposed method based on clustering is better than the transformation by conventional GMM, especially the one by K-Means algorithm with 20 centers is the best one.
机译:通过基于高斯混合模型(GMM)的常规声道频谱变换,由于大量的语音数据随时间变化且不稳定,因此变换规则不是很准确。本文主要研究一种基于聚类算法的频谱变换方法。首先,将训练数据分为几个聚类,并对每个聚类进行相对训练,以获得更准确的变换规则。并且在转换阶段,将每一帧的源参数分类为一个簇,然后按照该簇的转换规则进行转换。本文采用K-means算法作为数据分类的聚类方法。实验结果表明,提出的基于聚类的方法要优于传统的GMM变换,特别是采用20个中心的K-Means算法是最好的。

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