We propose two methods that reduce the post-nonlinear blind source separation problem (PNL-BSS) to a linear BSS problem. The first method is based on the concept of maximal correlation: we apply the alternating conditional expectation (ACE) algorithm--a powerful technique from non-parametric statistics--to approximately invert the componentwise nonlinear functions. The second method is a Gaussianizing transformation, which is motivated by the fact that linearly mixed signals before nonlinear transformation are approximately Gaussian distributed. This heuristic, but simple and efficient procedure works as good as the ACE method. Using the framework provided by ACE, convergence can be proven. The optimal transformations obtained by ACE coinci...
A novel approach which extends blind source separation (BSS) of one or group of sources to the case ...
In this work, we propose a new method for source separation of post- nonlinear mixtures that combine...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...
We propose two methods that reduce the post-nonlinear blind source separation problem (PNL-BSS) to a...
At the previous workshop (ICA2001) we proposed the ACE-TD method that reduces the post-nonlinear bli...
We propose an efficient method based on the concept of maximal correlation that reduces the post-non...
An approach to blind separation of post-nonlinearly mixed sources is presented. The proposed approac...
International audienceIn the context of nonlinear Blind Source Separation (BSS), the Post-Nonlinear ...
Although sources in general nonlinear mixturm arc not separable iising only statistical independenc...
International audienceIn this paper, a novel approach for performing Blind Source Separation (BSS) i...
International audienceIn this paper, we address the problem of blind compensation of nonlinear disto...
In this paper, we address the problem of blind compensation of nonlinear distortions. Our approach r...
International audienceIn linear mixtures, priors, like temporal coloration of the sources, can be us...
AbstractBlind source separation (BSS) is a problem that is often encountered in many applications, s...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
A novel approach which extends blind source separation (BSS) of one or group of sources to the case ...
In this work, we propose a new method for source separation of post- nonlinear mixtures that combine...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...
We propose two methods that reduce the post-nonlinear blind source separation problem (PNL-BSS) to a...
At the previous workshop (ICA2001) we proposed the ACE-TD method that reduces the post-nonlinear bli...
We propose an efficient method based on the concept of maximal correlation that reduces the post-non...
An approach to blind separation of post-nonlinearly mixed sources is presented. The proposed approac...
International audienceIn the context of nonlinear Blind Source Separation (BSS), the Post-Nonlinear ...
Although sources in general nonlinear mixturm arc not separable iising only statistical independenc...
International audienceIn this paper, a novel approach for performing Blind Source Separation (BSS) i...
International audienceIn this paper, we address the problem of blind compensation of nonlinear disto...
In this paper, we address the problem of blind compensation of nonlinear distortions. Our approach r...
International audienceIn linear mixtures, priors, like temporal coloration of the sources, can be us...
AbstractBlind source separation (BSS) is a problem that is often encountered in many applications, s...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
A novel approach which extends blind source separation (BSS) of one or group of sources to the case ...
In this work, we propose a new method for source separation of post- nonlinear mixtures that combine...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...