首页> 外文会议>IEEE Workshop on Machine Learning for Signal Processing >A JOINT PROBABILISTIC-DETERMINISTIC APPROACH USING SOURCE-FILTER MODELING OF SPEECH SIGNAL FOR SINGLE CHANNEL SPEECH SEPARATION
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A JOINT PROBABILISTIC-DETERMINISTIC APPROACH USING SOURCE-FILTER MODELING OF SPEECH SIGNAL FOR SINGLE CHANNEL SPEECH SEPARATION

机译:单频道语音分离的语音信号源滤波器建模的联合概率确定方法

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In this paper, we present a new technique for separating two speech signals from a single recording. For this purpose, we decompose the speech signal into the excitation signal and the vocal tract function and then estimate the components from the mixed speech using a hybrid model. We first express the probability density function (PDF) of the mixed speech's log spectral vectors in terms of the PDFs of the underlying speech signal's vocal tract functions. Then, the mean vectors of PDFs of the vocal tract functions are obtained using a Maximum Likelihood estimator given the mixed signal. Finally, the estimated vocal tract function along with the extracted pitch values are used to reconstruct estimates of the individual speech signals. We compare our model with both an underdetermined blind source separation and a CASA method. The experimental results show our model outperforms both techniques in terms of SNR improvement and the percentage of cross-talk suppression.
机译:在本文中,我们提出了一种从单个录音中分离两个语音信号的新技术。为此目的,我们将语音信号分解为激励信号和声道函数,然后使用混合模型从混合语音估计组件。首先,首先表达混合语音的日志光谱向量的概率密度函数(PDF),就底层语音信号的声道功能的PDF而言。然后,使用给定混合信号的最大似然估计器获得声带功能的PDF的平均载体。最后,使用估计的声音函数以及提取的间距值来重建各个语音信号的估计。我们将我们的模型与无限制的盲源分离和Casa方法进行比较。实验结果表明,我们的模型在SNR改善方面表现出两种技术以及串扰抑制的百分比。

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