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Kalman-filtering speech enhancement method based on avoiced-unvoiced speech model

机译:基于清音模型的卡尔曼滤波语音增强方法

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摘要

In this work, we are concerned with optimal estimation of clean speech from its noisy version based on a speech model we propose. We first propose a (single) speech model which satisfactorily describes voiced and unvoiced speech and silence (i.e., pauses between speech utterances), and also allows for exploitation of the long term characteristics of noise. We then reformulate the model equations so as to facilitate subsequent application of the well-established Kalman filter for computing the optimal estimate of the clean speech in the minimum-mean-square-error sense. Since the standard algorithm for Kalman-filtering involves multiplications of very large matrices and thus demands high computational cost, we devise a mathematically equivalent algorithm which is computationally much more efficient, by exploiting the sparsity of the matrices concerned. Next, we present the methods we use for estimating the model parameters and give a complete description of the enhancement process. Performance assessment based on spectrogram plots, objective measures and informal subjective listening tests all indicate that our method gives consistently good results. As far as signal-to-noise ratio is concerned, the improvements over existing methods can be as high as 4 dB
机译:在这项工作中,我们关注基于我们提出的语音模型,根据嘈杂的版本对干净语音的最佳估计。我们首先提出一个(单个)语音模型,该模型可以令人满意地描述发声和发声的语音和静音(即语音发声之间的停顿),还可以利用噪声的长期特性。然后,我们重新制定模型方程式,以便于以后应用完善的卡尔曼滤波器,以在最小均方误差的意义上计算清晰语音的最佳估计。由于卡尔曼滤波的标准算法涉及非常大的矩阵的乘法运算,因此需要很高的计算成本,因此,我们通过利用相关矩阵的稀疏性,设计了一种数学上等效的算法,该算法在计算上效率更高。接下来,我们介绍用于估计模型参数的方法,并对增强过程进行完整描述。基于频谱图,客观测量和非正式主观听力测试的性能评估均表明,我们的方法始终提供良好的结果。就信噪比而言,对现有方法的改进可高达4 dB

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