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Probabilistic Integration of Joint Density Model and Speaker Model for Voice Conversion

机译:联合密度模型和说话者模型的语音转换概率集成

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This paper describes a novel approach to voice conversion using both a joint density model and a speaker model. In voice conversion studies, approaches based on Gaussian Mixture Model (GMM) with probabilistic densities of joint vectors of a source and a target speakers are widely used to estimate a transformation. However, for sufficient quality, they require a parallel corpus which contains plenty of utterances with the same linguistic content spoken by both the speakers. In addition, the joint density GMM methods often suffer from over-training effects when the amount of training data is small. To compensate for these problems, we propose a novel approach to integrate the speaker GMM of the target with the joint density model using probabilistic formulation. The proposed method trains the joint density model with a few parallel utterances, and the speaker model with non-parallel data of the target, independently. It eases the burden on the source speaker. Experiments demonstrate the effectiveness of the proposed method, especially when the amount of the parallel corpus is small.
机译:本文介绍了一种使用联合密度模型和扬声器模型进行语音转换的新颖方法。在语音转换研究中,基于高斯混合模型(GMM)且具有源说话者和目标说话者的联合向量的概率密度的方法被广泛用于估计转换。但是,为了获得足够的质量,他们需要一个平行的语料库,该语料库包含许多发声,并且两个说话者都讲相同的语言内容。此外,当训练数据量较小时,关节密度GMM方法通常会遭受过度训练的影响。为了弥补这些问题,我们提出了一种新颖的方法,使用概率公式将目标的说话人GMM与关节密度模型相结合。所提出的方法分别训练具有少量平行发声的联合密度模型和具有非平行目标数据的说话者模型。它减轻了源扬声器的负担。实验证明了该方法的有效性,特别是当并行语料库的数量较少时。

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