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Voice SourceWaveform Analysis and Synthesis Using Principal Component Analysis and Gaussian Mixture Modelling

机译:主成分分析和高斯混合建模的语音源波形分析与综合

摘要

The paper presents a voice source waveform modeling techniques based on principal component analysis (PCA) and Gaussian mixture modeling (GMM). The voice source is obtained by inverse-filtering speech with the estimated vocal tract filter. This decomposition is useful in speech analysis, synthesis, recognition and coding. Here, a data-driven approach is presented for signal decomposition and classification based on the principal components of the voice source. The principal components are analyzed and the 'prototype' voice source signals corresponding to the Gaussian mixture means are examined. We show how an unknown signal can be decomposed into its components and/or prototypes and resynthesized. We show how the techniques are suited for both low bitrate or high quality analysis/synthesis schemes.
机译:本文提出了一种基于主成分分析(PCA)和高斯混合建模(GMM)的语音源波形建模技术。通过使用估计的声道滤波器对语音进行逆滤波来获得语音源。这种分解在语音分析,合成,识别和编码中很有用。在这里,提出了一种基于数据驱动的方法,用于基于语音源的主要成分进行信号分解和分类。分析主要成分,并检查与高斯混合装置相对应的“原型”语音源信号。我们展示了未知信号如何分解成其组件和/或原型并重新合成。我们将展示这些技术如何适用于低比特率或高质量分析/合成方案。

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