Article dans revue scientifique avec comité de lecture.We derive a new method for solving nonlinear blind source separation problems by exploiting second-order statistics in a kernel induced feature space. This paper extends a new and efficient closed-form linear algorithm to the non-linear domain using `the kernel trick' originally applied in Support Vector Machines. This technique could likewise be applied to other linear covariance-based source separation algorithms. Experiments on realistic nonlinear mixtures of speech signals, gas multisensor data and visual disparity data illustrate the applicability of our approach
Using the kernel trick idea and the kernels-as-features idea, we can construct two kinds of nonlinea...
Abstract-- This paper describes a hybrid blind source separation approach (HBSSA) for nonlinear mixi...
In contrast to the equivalence of linear blind source separation and linear independent component an...
We propose kTDSEP, a kernel-based algorithm for nonlinear blind source separation (BSS). It combines...
In this work we propose a kernel-based blind source separation (BSS) algorithm that can perform nonl...
In kernel based learning the data is mapped to a kernel feature space of a dimension that correspond...
Abstract—To solve the problem of nonlinear blind source separation (BSS), a novel algorithm based on...
In kernel based learning the data is mapped to a kernel feature space of a dimension that correspond...
An approach to blind separation of post-nonlinearly mixed sources is presented. The proposed approac...
In this thesis, we focus on the signal processing foundations of this emerging field of fundamental ...
We present and test an extension of slow feature analysis as a novel approach to nonlinear blind sou...
International audienceBecause it can be found in many applications, the Blind Separation of Sources ...
A second-order method for blind source separation of noisy instantaneous linear mix-tures is present...
We address in this paper a method for blind source separation of multi-microphone signals. The multi...
We propose an Equivariant Kernel Nonlinear Separation (EKENS) learning algorithm to extract independ...
Using the kernel trick idea and the kernels-as-features idea, we can construct two kinds of nonlinea...
Abstract-- This paper describes a hybrid blind source separation approach (HBSSA) for nonlinear mixi...
In contrast to the equivalence of linear blind source separation and linear independent component an...
We propose kTDSEP, a kernel-based algorithm for nonlinear blind source separation (BSS). It combines...
In this work we propose a kernel-based blind source separation (BSS) algorithm that can perform nonl...
In kernel based learning the data is mapped to a kernel feature space of a dimension that correspond...
Abstract—To solve the problem of nonlinear blind source separation (BSS), a novel algorithm based on...
In kernel based learning the data is mapped to a kernel feature space of a dimension that correspond...
An approach to blind separation of post-nonlinearly mixed sources is presented. The proposed approac...
In this thesis, we focus on the signal processing foundations of this emerging field of fundamental ...
We present and test an extension of slow feature analysis as a novel approach to nonlinear blind sou...
International audienceBecause it can be found in many applications, the Blind Separation of Sources ...
A second-order method for blind source separation of noisy instantaneous linear mix-tures is present...
We address in this paper a method for blind source separation of multi-microphone signals. The multi...
We propose an Equivariant Kernel Nonlinear Separation (EKENS) learning algorithm to extract independ...
Using the kernel trick idea and the kernels-as-features idea, we can construct two kinds of nonlinea...
Abstract-- This paper describes a hybrid blind source separation approach (HBSSA) for nonlinear mixi...
In contrast to the equivalence of linear blind source separation and linear independent component an...