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首页> 外文期刊>EURASIP journal on applied signal processing >Speech enhancement by MAP spectral amplitude estimation using a super-Gaussian speech model
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Speech enhancement by MAP spectral amplitude estimation using a super-Gaussian speech model

机译:通过使用超高斯语音模型的MAP频谱幅度估计进行语音增强

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摘要

This contribution presents two spectral amplitude estimators for acoustical background noise suppression based on maximum a posteriori estimation and super-Gaussian statistical modelling of the speech DFT amplitudes. The probability density function of the speech spectral amplitude is modelled with a simple parametric function, which allows a high approximation accuracy for Laplace- or Gamma-distributed real and imaginary parts of the speech DFT coefficients. Also, the statistical model can be adapted to optimally fit the distribution of the speech spectral amplitudes for a specific noise reduction system. Based on the superGaussian statistical model, computationally efficient maximum a posteriori speech estimators are derived, which outperform the commonly applied Ephraim-Malah algorithm.
机译:此贡献提出了两个基于语音后验估计和语音DFT振幅的超高斯统计模型的声学背景噪声抑制的频谱振幅估计器。语音频谱幅度的概率密度函数使用简单的参数函数建模,这为语音DFT系数的Laplace或Gamma分布实部和虚部提供了较高的近似精度。同样,统计模型可以适合于针对特定的降噪系统来最佳地拟合语音频谱幅度的分布。基于superGaussian统计模型,得出了计算效率最高的后验语音估计量,其性能优于常用的Ephraim-Malah算法。

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