Gaussian Mixture Models (GMMs) of power spectral densities of speech and noise are used with explicit Bayesian estimations in Wiener filtering of noisy speech. No assumption is made on the nature or stationarity of the noise. No voice activity detection (VAD) or any other means is employed to estimate the input SNR. The GMM mean vectors are used to form sets of over-determined system of equations whose solutions lead to the first estimates of speech and noise power spectra. The noise source is also identified and the input SNR estimated in this first step. These first estimates are then refined using approximate but explicit MMSE and MAP estimation formulations. The refined estimates are then used in a Wiener filter to reduce noise and enha...
The portability of modern voice processing devices allows them to be used in environments where back...
This paper presents an algorithm for modulation-domain speech enhancement using a Kalman filter. The...
We develop an unbiased estimate of mean-squared error (MSE), where the observations are assumed to b...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
In the present-day communications speech signals get contaminated due to various sorts of noises tha...
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...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
Traditional subspace based speech enhancement (SSE)methods\ud use linear minimum mean square error (...
In this paper, we present a statistical model-based speech enhancement technique using acoustic envi...
This work begins by examining the correlation between audio and visual speech features and reveals h...
Noise estimation is an important part for noisy speech enhancement due to its momentous effect on th...
In this paper, we present a speech enhancement technique based on the ambient noise classification t...
The aim of this paper is to use visual speech information to create Wiener filters for audio speech ...
The portability of modern voice processing devices allows them to be used in environments where back...
This paper presents an algorithm for modulation-domain speech enhancement using a Kalman filter. The...
We develop an unbiased estimate of mean-squared error (MSE), where the observations are assumed to b...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
In the present-day communications speech signals get contaminated due to various sorts of noises tha...
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...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
Traditional subspace based speech enhancement (SSE)methods\ud use linear minimum mean square error (...
In this paper, we present a statistical model-based speech enhancement technique using acoustic envi...
This work begins by examining the correlation between audio and visual speech features and reveals h...
Noise estimation is an important part for noisy speech enhancement due to its momentous effect on th...
In this paper, we present a speech enhancement technique based on the ambient noise classification t...
The aim of this paper is to use visual speech information to create Wiener filters for audio speech ...
The portability of modern voice processing devices allows them to be used in environments where back...
This paper presents an algorithm for modulation-domain speech enhancement using a Kalman filter. The...
We develop an unbiased estimate of mean-squared error (MSE), where the observations are assumed to b...