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Speaker-independent Model-based Single Channel Speech Separation

机译:基于说话者独立模型的单通道语音分离

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摘要

In this paper, we present a model-based single channel speech separation (SCSS) technique with two attributes. First, the proposed techniques is speaker-independent. Second, the proposed technique is able to separate out speech signals even though they have been mixed with different levels of energy. A mathematical model is derived in which the probability density function (PDF) of the mixed signal is expressed in terms of envelopes and excitation signals of sources and associated gains. Then a maximum likelihood estimator is used to estimate the sources' parameters and gains. The proposed technique is evaluated with male + male, male + female, and female + female mixtures. The experimental results show a significant signal-to-noise ratio (SNR) improvement when the proposed technique is compared with approaches which apply the excitation signals or log spectra to separate the speech signals in the speaker-independent speech separation scenario.
机译:在本文中,我们提出了一种基于模型的具有两个属性的单通道语音分离(SCSS)技术。首先,所提出的技术与说话者无关。其次,即使语音信号已经混合了不同的能量水平,所提出的技术也能够分离出语音信号。得出一个数学模型,其中混合信号的概率密度函数(PDF)用信号源的包络和激励信号及相关增益表示。然后,使用最大似然估计器来估计源的参数和增益。男性+男性,男性+女性和女性+女性混合气对提出的技术进行了评估。实验结果表明,与拟议中的技术相比,该技术与应用激励信号或对数频谱来分离与说话者无关的语音分离场景中的语音信号的方法相比,信噪比(SNR)有了显着提高。

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