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Activity-mapping non-negative matrix factorization for exemplar-based voice conversion

机译:基于示例的语音转换的活动映射非负矩阵分解

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Voice conversion (VC) is being widely researched in the field of speech processing because of increased interest in using such processing in applications such as personalized Text-To-Speech systems. We present in this paper an exemplar-based VC method using Non-negative Matrix Factorization (NMF), which is different from conventional statistical VC. In our previous exemplar-based VC method, input speech is represented by the source dictionary and its sparse coefficients. The source and the target dictionaries are fully coupled and the converted voice is constructed from the source coefficients and the target dictionary. In this paper, we propose an Activity-mapping NMF approach and introduce mapping matrices between source and target sparse coefficients. The effectiveness of this method was confirmed by comparing its effectiveness with that of a conventional Gaussian Mixture Model (GMM)-based method and a conventional NMF-based method.
机译:语音转换(VC)在语音处理领域被广泛研究,因为在诸如个性化文本到语音系统的应用中使用这种处理的兴趣增加。我们在本文中呈现了一种使用非负矩阵分子(NMF)的示例性的VC方法,其与传统统计VC不同。在我们之前的基于示例性的VC方法中,输入语音由源词典及其稀疏系数表示。源和目标词典完全耦合,并且从源系数和目标字典构成转换的语音。在本文中,我们提出了一种活动映射NMF方法,并在源稀疏系数之间引入映射矩阵。通过比较其与常规高斯混合模型(GMM)的方法和常规NMF的方法的效果来确认该方法的有效性。

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