In this contribution, we address the issue of Blind Source Separation (BSS) in non-Gaussian noise. We propose a two-step approach by combining the fractional lower order sta-tistics (FLOS) for the mixing matrix estimation and min-imum entropy criterion for noise-free source components estimation with the gradient-based BSS algorithms in an el-egant way. First, we extend the existing gradient algorithm in order to reduce the bias in the demixing matrix caused by the non-Gaussian noise. In the noise cancellation step, we derive a new kind of nonlinear function that depends on the noise distribution and we discuss the optimal choice of this nonlinearity assuming a generalized Gaussian noise model. The optimal choice, in the minimum entropy sen...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
Blind source separation (BSS) is a process to recover a set of unobserved source signals from their ...
Abstract—In this paper, we propose a new expectation-maximization (EM) algorithm, named GMM-EM, to b...
Abstract—In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the...
In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the viewpoin...
International audienceWe consider the blind source separation (BSS) problem in the noisy context. We...
The minimum entropy or maximum likelihood estimation can be utilized in blind source separation prob...
Blind source separation is a very known problem which refers to finding the original sources without...
Given a linear and instantaneous mixture model, we prove that for blind source separation (BSS) algo...
AbstractBlind source separation (BSS) is a problem that is often encountered in many applications, s...
In this paper, we propose a new semi-parametric approach for blind source separation (BSS) of noisy ...
Tills thesis is initially concerned with solving the Blind Source Separation (BSS) problem. The BSS ...
ABSTRACT We present a new approach to the blind source separation problem (BSS, also known as Indepe...
Abstract:- Blind Source Separation (BSS) algorithms based on Independent Component Analysis (ICA) ge...
Since in many blind source separation applications, latent sources are both non-Gaussian and have sa...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
Blind source separation (BSS) is a process to recover a set of unobserved source signals from their ...
Abstract—In this paper, we propose a new expectation-maximization (EM) algorithm, named GMM-EM, to b...
Abstract—In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the...
In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the viewpoin...
International audienceWe consider the blind source separation (BSS) problem in the noisy context. We...
The minimum entropy or maximum likelihood estimation can be utilized in blind source separation prob...
Blind source separation is a very known problem which refers to finding the original sources without...
Given a linear and instantaneous mixture model, we prove that for blind source separation (BSS) algo...
AbstractBlind source separation (BSS) is a problem that is often encountered in many applications, s...
In this paper, we propose a new semi-parametric approach for blind source separation (BSS) of noisy ...
Tills thesis is initially concerned with solving the Blind Source Separation (BSS) problem. The BSS ...
ABSTRACT We present a new approach to the blind source separation problem (BSS, also known as Indepe...
Abstract:- Blind Source Separation (BSS) algorithms based on Independent Component Analysis (ICA) ge...
Since in many blind source separation applications, latent sources are both non-Gaussian and have sa...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
Blind source separation (BSS) is a process to recover a set of unobserved source signals from their ...
Abstract—In this paper, we propose a new expectation-maximization (EM) algorithm, named GMM-EM, to b...