This paper presents a new distributed processing approach to "direct" blind equalization of Single Input Multiple Output (SIMO) channels. Under mild conditions, it is shown here that we can recover the original source signal up to its scaled and delayed version by decorrelating the equalizer (neural network) outputs in spatio-temporal domain. "Spatio-temporal anti-Hebbian" learning rule (simple, local, biologically plausible) is derived from an information-theoretic approach and is applied for spatio-temporal decorrelation. A linear feedback neural network with FIR synapses (trained by spatio-temporal anti-Hebbian learning rule) is proposed and is shown to be a good candidate for the equalizer. Computer simulation experi...
In this paper, we propose a blind adaptive channel shortening method for designing finite-impulse re...
In this paper, unsupervised deep learning solutions for multiuser single-input multiple-output (MU-S...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
International audienceIn this paper, we study blind equalization techniques to reduce the intersymbo...
In most digital communication systems, bandwidth limited channel along with multipath propagation c...
Smart antenna aided broadband beamforming plays an increas-ingly important role in wireless communic...
In this paper, we make use of a blind adaptive linear predictor for channel shortening in single inp...
This article investigates blind adaptive equalization for single- input/multiple-output (SIMO) chann...
In this letter we presentahybrid network which performs blind deconvolution of linear MIMO systems....
Recently, an algorithm for blind (without training sequence) and direct (without prior estimation of...
This paper investigates a blind space–time equaliser (STE) designed for single-input multiple-output...
Most of the commonly used blind equalization algorithms are based on the minimization of a nonconvex...
When digital signals are transmitted through frequency selective communication channels, one of the ...
This paper deals with blind equalization of single-input-multiple-output (SIMO) finite-impulse-respo...
The design of adaptive equalizers is an important topic for practical implementation of ecient digit...
In this paper, we propose a blind adaptive channel shortening method for designing finite-impulse re...
In this paper, unsupervised deep learning solutions for multiuser single-input multiple-output (MU-S...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...
International audienceIn this paper, we study blind equalization techniques to reduce the intersymbo...
In most digital communication systems, bandwidth limited channel along with multipath propagation c...
Smart antenna aided broadband beamforming plays an increas-ingly important role in wireless communic...
In this paper, we make use of a blind adaptive linear predictor for channel shortening in single inp...
This article investigates blind adaptive equalization for single- input/multiple-output (SIMO) chann...
In this letter we presentahybrid network which performs blind deconvolution of linear MIMO systems....
Recently, an algorithm for blind (without training sequence) and direct (without prior estimation of...
This paper investigates a blind space–time equaliser (STE) designed for single-input multiple-output...
Most of the commonly used blind equalization algorithms are based on the minimization of a nonconvex...
When digital signals are transmitted through frequency selective communication channels, one of the ...
This paper deals with blind equalization of single-input-multiple-output (SIMO) finite-impulse-respo...
The design of adaptive equalizers is an important topic for practical implementation of ecient digit...
In this paper, we propose a blind adaptive channel shortening method for designing finite-impulse re...
In this paper, unsupervised deep learning solutions for multiuser single-input multiple-output (MU-S...
One of the main obstacles to reliable communications is the inter symbol interference (ISI). An equa...