In this study, we propose a novel probabilistic model for separating clean speech signals from noisy mixtures by decomposing the mixture spectra into a structured speech part and a more flexible residual part. The main novelty in our model is that it uses a family of heavy-tailed distributions, so called the α-stable distributions, for modeling the residual signal. We develop an expectation-maximization algorithm for parameter estimation and a Monte Carlo scheme for posterior estimation of the clean speech. Our experiments show that the proposed method outperforms relevant factorization-based algorithms by a significant margin
The efficiency of many speech processing methods rely on accurate modeling of the distribution of th...
Speech enhancement in strong noise condition is a challenging problem. Low-rank and sparse matrix de...
© 2015 IEEE. A key stage in speech enhancement is noise estimation which usually requires prior mode...
In this study, we propose a novel probabilistic model for separating clean speech signals from noisy...
We present a new method for speech denoising and robust speech recognition. Using the framework of p...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
The aim of this paper is to introduce class of stable distributions as a potentional tool for statis...
Abstract—We present a spectral domain, speech enhancement algorithm. The new algorithm is based on a...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
International audiencehis paper focuses on single-channel semi-supervised speech en-hancement...
In this paper, a new subspace speech enhancement method using low-rank and sparse decomposition is p...
Subspace-based methods have been effectively used to estimate enhanced speech from noisy speech samp...
zc2204[at]columbia.edu helene.papadopoulos[at]lss.supelec.fr dpwe[at]ee.columbia.edu One powerful ap...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
International audienceOne powerful approach to speech enhancement employs strong models for both spe...
The efficiency of many speech processing methods rely on accurate modeling of the distribution of th...
Speech enhancement in strong noise condition is a challenging problem. Low-rank and sparse matrix de...
© 2015 IEEE. A key stage in speech enhancement is noise estimation which usually requires prior mode...
In this study, we propose a novel probabilistic model for separating clean speech signals from noisy...
We present a new method for speech denoising and robust speech recognition. Using the framework of p...
Statistical signal processing has been very successful. We proposed novel probabilistic models and d...
The aim of this paper is to introduce class of stable distributions as a potentional tool for statis...
Abstract—We present a spectral domain, speech enhancement algorithm. The new algorithm is based on a...
73 p.This dissertation reports my work on speech enhancement incorporating statistical modelling of ...
International audiencehis paper focuses on single-channel semi-supervised speech en-hancement...
In this paper, a new subspace speech enhancement method using low-rank and sparse decomposition is p...
Subspace-based methods have been effectively used to estimate enhanced speech from noisy speech samp...
zc2204[at]columbia.edu helene.papadopoulos[at]lss.supelec.fr dpwe[at]ee.columbia.edu One powerful ap...
A new speech enhancement method based on Maximum A-Posteriori (MAP) estimation on Gaussian Mixture M...
International audienceOne powerful approach to speech enhancement employs strong models for both spe...
The efficiency of many speech processing methods rely on accurate modeling of the distribution of th...
Speech enhancement in strong noise condition is a challenging problem. Low-rank and sparse matrix de...
© 2015 IEEE. A key stage in speech enhancement is noise estimation which usually requires prior mode...