Traditional subspace based speech enhancement (SSE)methods\ud use linear minimum mean square error (LMMSE) estimation\ud that is optimal if the Karhunen Loeve transform (KLT) coefficients of speech and noise are Gaussian distributed. In this paper, we investigate the use of Gaussian mixture (GM) density for modeling the non-Gaussian statistics of the clean speech KLT coefficients. Using Gaussian mixture model (GMM), the optimum minimum mean square error (MMSE) estimator is found to be nonlinear and the traditional LMMSE estimator is shown to be a special case. Experimental results show that the proposed method provides better enhancement performance than the traditional subspace based methods.Index Terms: Subspace based speech enhancement, ...
We consider DFT based techniques for single-channel speech en-hancement. Specifically, we derive min...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
Traditional subspace based speech enhancement (SSE)methods use linear minimum mean square error (LM...
Considering a general linear model of signal degradation, by modeling the probability density functi...
Considering a general linear model of signal degradation, by modeling the probability density functi...
Gaussian Mixture Models (GMMs) of power spectral densities of speech and noise are used with explici...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
In this paper, we present a statistical model-based speech enhancement technique using acoustic envi...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
ABSTRACT This document describes an extension of the Subspace Gaussian Mixture Model (SGMM). The ext...
This paper describes experimental results of applying Subspace Gaussian Mixture Models (SGMMs) in tw...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
Abstract—Although many discrete Fourier transform (DFT) domain-based speech enhancement methods rely...
We consider DFT based techniques for single-channel speech en-hancement. Specifically, we derive min...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
Traditional subspace based speech enhancement (SSE)methods use linear minimum mean square error (LM...
Considering a general linear model of signal degradation, by modeling the probability density functi...
Considering a general linear model of signal degradation, by modeling the probability density functi...
Gaussian Mixture Models (GMMs) of power spectral densities of speech and noise are used with explici...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
In this paper, we present a statistical model-based speech enhancement technique using acoustic envi...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
ABSTRACT This document describes an extension of the Subspace Gaussian Mixture Model (SGMM). The ext...
This paper describes experimental results of applying Subspace Gaussian Mixture Models (SGMMs) in tw...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
Abstract—Although many discrete Fourier transform (DFT) domain-based speech enhancement methods rely...
We consider DFT based techniques for single-channel speech en-hancement. Specifically, we derive min...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...
We describe an acoustic modeling approach in which all phonetic states share a common Gaussian Mixtu...