International audienceThis paper introduces a new method to maximize kurtosis-based contrast functions. Such contrast functions appear in the problem of blind source separation of convolutively mixed sources: the corresponding methods recover the sources one by one using a deflation approach. The proposed maximization algorithm is based on the particular nature of the criterion. The method is similar in spirit to a gradient ascent method, but differs in the fact that a "reference" contrast function is considered at each line search. The convergence of the method to a stationary point of the criterion can be proved. The theoretical result is illustrated by simulatio
We present a computationally efficient method of separating mixed speech signals. The method uses a ...
In blind source separation, convergence and separation performances are highly dependent on a relati...
In this paper, we propose a maximum contrast analysis (MCA) method for nonnegative blind source sepa...
International audienceThis paper introduces a new method to maximize kurtosis-based contrast functio...
Abstract—This paper deals with efficient optimization of cu-mulant based contrast functions. Such a ...
Blind source separation and equalization aim at recovering a set of unknown source signals from thei...
This paper deals with the efficient optimization problem of Cumulant-based contrast criteria in the ...
The blind source separation (BSS) problem is often solved by maximizing objective functions reflecti...
Blind Source Separation aim to recover a set of M independent signals called sources from the observ...
Blind signal extraction, a hot issue in the field of communication signal processing, aims to retrie...
[[abstract]]Ding and Ngugen proposed a kurtosis maximization algorithm and Chi arid Chen proposed a ...
This paper deals with the optimization of kurtosis for complex-valued signals in the independent com...
International audienceThis paper deals with the problem of blind source separation of convolutive MI...
This work deals with blind source separation in the context of convolutive mixtures. The problem is ...
AbstractIn this paper, we propose a maximum contrast analysis (MCA) method for nonnegative blind sou...
We present a computationally efficient method of separating mixed speech signals. The method uses a ...
In blind source separation, convergence and separation performances are highly dependent on a relati...
In this paper, we propose a maximum contrast analysis (MCA) method for nonnegative blind source sepa...
International audienceThis paper introduces a new method to maximize kurtosis-based contrast functio...
Abstract—This paper deals with efficient optimization of cu-mulant based contrast functions. Such a ...
Blind source separation and equalization aim at recovering a set of unknown source signals from thei...
This paper deals with the efficient optimization problem of Cumulant-based contrast criteria in the ...
The blind source separation (BSS) problem is often solved by maximizing objective functions reflecti...
Blind Source Separation aim to recover a set of M independent signals called sources from the observ...
Blind signal extraction, a hot issue in the field of communication signal processing, aims to retrie...
[[abstract]]Ding and Ngugen proposed a kurtosis maximization algorithm and Chi arid Chen proposed a ...
This paper deals with the optimization of kurtosis for complex-valued signals in the independent com...
International audienceThis paper deals with the problem of blind source separation of convolutive MI...
This work deals with blind source separation in the context of convolutive mixtures. The problem is ...
AbstractIn this paper, we propose a maximum contrast analysis (MCA) method for nonnegative blind sou...
We present a computationally efficient method of separating mixed speech signals. The method uses a ...
In blind source separation, convergence and separation performances are highly dependent on a relati...
In this paper, we propose a maximum contrast analysis (MCA) method for nonnegative blind source sepa...