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Speech enhancement using super-Gaussian speech models and noncausal a priori SNR estimation

机译:使用超高斯语音模型和非因果先验SNR估计进行语音增强

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摘要

A priori signal-to-noise ratio (SNR) estimation is of major consequence in speech enhancement applications. Recently, we introduced a noncausal recursive estimator for the a priori SNR based on a Gaussian speech model, and showed its advantage compared to using the decision-directed estimator. In particular, noncausal estimation facilitates a distinction between speech onsets and noise irregularities. In this paper, we extend our noncausal estimation approach to Gamma and Laplacian speech models. We show that the performance of noncausal estimation, when applied to the problem of speech enhancement, is better under a Laplacian model than under Gaussian or Gamma models. Furthermore, the choice of the specific speech model has a smaller effect on the enhanced speech signal when using the noncausal a priori SNR estimator than when using the decision-directed method.
机译:在语音增强应用中,先验信噪比(SNR)估计至关重要。最近,我们针对基于高斯语音模型的先验SNR引入了非因果递归估计器,并显示了与使用决策导向估计器相比的优势。特别地,非因果估计有助于区分语音发作和噪声不规则性。在本文中,我们将非因果估计方法扩展到Gamma和Laplacian语音模型。我们表明,非因果估计的性能,当应用于语音增强问题时,在Laplacian模型下比在高斯或Gamma模型下更好。此外,使用非因果先验SNR估计器时,特定语音模型的选择对增强语音信号的影响比使用决策指导方法时的选择小。

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