Abstract—We present a spectral domain, speech enhancement algorithm. The new algorithm is based on a mixture model for the short time spectrum of the clean speech signal, and on a max-imum assumption in the production of the noisy speech spectrum. In the past this model was used in the context of noise robust speech recognition. In this paper we show that this model is also effec-tive for improving the quality of speech signals corrupted by ad-ditive noise. The computational requirements of the algorithm can be significantly reduced, essentially without paying performance penalties, by incorporating a dual codebook scheme with tied vari-ances. Experiments, using recorded speech signals and actual noise sources, show that in spite of its low...
Enhancement of speech corrupted by broadband noise is subject of interest in many applications. For ...
In this paper, we propose a novel speech enhancement technique based on an improved minimum statisti...
Gaussian Mixture Models (GMMs) of power spectral densities of speech and noise are used with explici...
An optimal approach for enhancing a speech signal degraded by uncorrelated stationary additive noise...
The effective enhancement of noise-degraded speech is one of the most challenging problems in speech...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
This paper presents an algorithm for modulation-domain speech enhancement using a Kalman filter. The...
In this paper, we present a statistical model-based speech enhancement technique using acoustic envi...
Considering a general linear model of signal degradation, by modeling the probability density functi...
Over the years, countless algorithms have been proposed to solve the problem of speech enhancement f...
The goal of a speech enhancement algorithm is to reduce or eliminate background noise without distor...
In this paper, we present a speech enhancement technique based on the ambient noise classification t...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
We present an efficient algorithm for the enhancement of speech signals which are heavily corrupted ...
Enhancement of speech corrupted by broadband noise is subject of interest in many applications. For ...
In this paper, we propose a novel speech enhancement technique based on an improved minimum statisti...
Gaussian Mixture Models (GMMs) of power spectral densities of speech and noise are used with explici...
An optimal approach for enhancing a speech signal degraded by uncorrelated stationary additive noise...
The effective enhancement of noise-degraded speech is one of the most challenging problems in speech...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
This paper presents an algorithm for modulation-domain speech enhancement using a Kalman filter. The...
In this paper, we present a statistical model-based speech enhancement technique using acoustic envi...
Considering a general linear model of signal degradation, by modeling the probability density functi...
Over the years, countless algorithms have been proposed to solve the problem of speech enhancement f...
The goal of a speech enhancement algorithm is to reduce or eliminate background noise without distor...
In this paper, we present a speech enhancement technique based on the ambient noise classification t...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
We present an efficient algorithm for the enhancement of speech signals which are heavily corrupted ...
Enhancement of speech corrupted by broadband noise is subject of interest in many applications. For ...
In this paper, we propose a novel speech enhancement technique based on an improved minimum statisti...
Gaussian Mixture Models (GMMs) of power spectral densities of speech and noise are used with explici...