International audienceWhile most reported source separation methods concern linear mixtures, we here address the nonlinear case. Even for a known nonlinear mixing model, creating a system which implements the exact inverse of this model is not straightforward for most nonlinear models. We first define a large class of possibly nonlinear models, i.e. "additive-target mixtures" (ATM), for which this inversion may be achieved thanks to the nonlinear recurrent networks that we propose to this end. We then further extend this approach to the "extractable-target mixtures" (ETM) that we also introduce in this paper. We illustrate these general approaches for two specific classes of mixtures, i.e. linear-quadratic mixtures, and quadratic ones. We t...
n this paper a new neural network model for blind demixing of nonlinear mixtures is proposed. We add...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...
International audienceIn this paper, we analyse and solve a source separation problem based on a mix...
International audienceWhile most reported source separation methods concern linear mixtures, we here...
Abstract While most reported source separation methods concern linear mixtures, we here address the ...
While most reported blind source separation methods concern linear mixtures, we here address the non...
Abstract—In this paper, we address the problem of separation of mutually independent sources in nonl...
Plenary invited talk without paper in the proceedingsInternational audienceThe problem of source sep...
International audienceIn this paper, a novel approach for performing Blind Source Separation (BSS) i...
International audienceIn this work, we deal with the problem of nonlinear blind source separation (B...
A neural-based method for source separation in nonlinear mixture is proposed in this paper. A cost f...
sem informaçãosem informaçãoIn this work, we investigate the use of monotonic neural networks as com...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
International audienceIn this work, we consider the problem of blind source separation (BSS) by depa...
This paper proposes a novel neural-network approach to blind source separation in nonlinear mixture....
n this paper a new neural network model for blind demixing of nonlinear mixtures is proposed. We add...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...
International audienceIn this paper, we analyse and solve a source separation problem based on a mix...
International audienceWhile most reported source separation methods concern linear mixtures, we here...
Abstract While most reported source separation methods concern linear mixtures, we here address the ...
While most reported blind source separation methods concern linear mixtures, we here address the non...
Abstract—In this paper, we address the problem of separation of mutually independent sources in nonl...
Plenary invited talk without paper in the proceedingsInternational audienceThe problem of source sep...
International audienceIn this paper, a novel approach for performing Blind Source Separation (BSS) i...
International audienceIn this work, we deal with the problem of nonlinear blind source separation (B...
A neural-based method for source separation in nonlinear mixture is proposed in this paper. A cost f...
sem informaçãosem informaçãoIn this work, we investigate the use of monotonic neural networks as com...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
International audienceIn this work, we consider the problem of blind source separation (BSS) by depa...
This paper proposes a novel neural-network approach to blind source separation in nonlinear mixture....
n this paper a new neural network model for blind demixing of nonlinear mixtures is proposed. We add...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...
International audienceIn this paper, we analyse and solve a source separation problem based on a mix...