The derivation of MMSE estimators for the DFT coefficients of speech signals, given an observed noisy signal and super-Gaussian prior distributions, has received a lot of interest recently. In this letter, we look at the distribution of the periodogram coefficients of different phonemes, and show that they have a gamma distribution with shape parameters less than one. This verifies that the DFT coefficients for not only the whole speech signal but also for individual phonemes have super-Gaussian distributions. We develop a spectral domain speech enhancement algorithm, and derive hidden Markov model (HMM) based MMSE estimators for speech periodogram coefficients under this gamma assumption in both a high uniform resolution and a reduced-reso...
A comprehensive linear minimum mean squared error (LMMSE) approach for parametric speech enhancemen...
Abstract — This paper presents a technique for determining improved speech presence probabilities (S...
Most DFT domain based enhancement methods rely on stochastic models to derive clean speech estimator...
Despite the fact that histograms of speech DFT coefficients are super-Gaussian, not much attention h...
We consider DFT based techniques for single-channel speech en-hancement. Specifically, we derive min...
This contribution presents two spectral amplitude estimators for acoustical background noise suppre...
Abstract—This paper considers techniques for single-channel speech enhancement based on the discrete...
Considering a general linear model of signal degradation, by modeling the probability density functi...
In this paper, we propose a minimum mean square error spectral estimator for clean speech spectral a...
Abstract—This report addresses the problem of speech enhancement employing the Minimum Mean-Square E...
Considering a general linear model of signal degradation, by modeling the probability density functi...
In the present-day communications speech signals get contaminated due to various sorts of noises tha...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
Abstract—Although many discrete Fourier transform (DFT) domain-based speech enhancement methods rely...
Although the linear mean-squared error (MSE) complex-DFT es-timator, i.e., the Wiener filter, is wel...
A comprehensive linear minimum mean squared error (LMMSE) approach for parametric speech enhancemen...
Abstract — This paper presents a technique for determining improved speech presence probabilities (S...
Most DFT domain based enhancement methods rely on stochastic models to derive clean speech estimator...
Despite the fact that histograms of speech DFT coefficients are super-Gaussian, not much attention h...
We consider DFT based techniques for single-channel speech en-hancement. Specifically, we derive min...
This contribution presents two spectral amplitude estimators for acoustical background noise suppre...
Abstract—This paper considers techniques for single-channel speech enhancement based on the discrete...
Considering a general linear model of signal degradation, by modeling the probability density functi...
In this paper, we propose a minimum mean square error spectral estimator for clean speech spectral a...
Abstract—This report addresses the problem of speech enhancement employing the Minimum Mean-Square E...
Considering a general linear model of signal degradation, by modeling the probability density functi...
In the present-day communications speech signals get contaminated due to various sorts of noises tha...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
Abstract—Although many discrete Fourier transform (DFT) domain-based speech enhancement methods rely...
Although the linear mean-squared error (MSE) complex-DFT es-timator, i.e., the Wiener filter, is wel...
A comprehensive linear minimum mean squared error (LMMSE) approach for parametric speech enhancemen...
Abstract — This paper presents a technique for determining improved speech presence probabilities (S...
Most DFT domain based enhancement methods rely on stochastic models to derive clean speech estimator...