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首页> 外文期刊>IEEE transactions on audio, speech and language processing >MAP Estimators for Speech Enhancement Under Normal and Rayleigh Inverse Gaussian Distributions
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MAP Estimators for Speech Enhancement Under Normal and Rayleigh Inverse Gaussian Distributions

机译:正态和瑞利逆高斯分布下用于语音增强的MAP估计器

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This paper presents a new class of estimators for speech enhancement in the discrete Fourier transform (DFT) domain, where we consider a multidimensional normal inverse Gaussian (MNIG) distribution for the speech DFT coefficients. The MNIG distribution can model a wide range of processes, from heavy-tailed to less heavy-tailed processes. Under the MNIG distribution complex DFT and amplitude estimators are derived. In contrast to other estimators, the suppression characteristics of the MNIG-based estimators can be adapted online to the underlying distribution of the speech DFT coefficients. Compared to noise suppression algorithms based on preselected super-Gaussian distributions, the MNIG-based complex DFT and amplitude estimators lead to a performance improvement in terms of segmental signal-to-noise ratio (SNR) in the order of 0.3 to 0.6 dB and 0.2 to 0.6 dB, respectively
机译:本文提出了一种新的估计器,用于离散傅立叶变换(DFT)域中的语音增强,其中我们考虑了语音DFT系数的多维正态逆高斯(MNIG)分布。 MNIG分布可以为从重尾到轻尾的广泛过程建模。在MNIG分布下,导出了复数DFT和幅度估计器。与其他估计器相比,基于MNIG的估计器的抑制特性可以在线适应语音DFT系数的基本分布。与基于预选的超高斯分布的噪声抑制算法相比,基于MNIG的复数DFT和幅度估计器在分段信噪比(SNR)方面的性能提高了0.3到0.6 dB和0.2分别达到0.6 dB

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