approach is presented to solve the joint blind channel identi-fication and blind symbol estimation problem for single-input multiple-output systems. A partial prior on the symbols is incor-porated into the criterion which improves the estimation accuracy and brings robustness toward poor channel diversity conditions. At the same time, this method introduces fewer local minima than the use of a full prior (statistical) ML. In the absence of noise, the proposed batch algorithm estimates perfectly the channel and symbols with a finite number of samples. Based on these considerations, an adaptive implementation of this algorithm is proposed. It presents some desirable properties in-cluding low complexity, robustness to channel overestimation, a...
This thesis deals with the blind channel identification / equalization problem. Conventional non-bli...
Adaptive channel equalization without resorting to a training sequence is often referred to as blind...
This paper addresses the problems of blind channel estimation and symbol detection with second order...
This paper presents a novel optimization method for blind multi-channel identification. The formulat...
A blind adaptive algorithm for channel equalisation is proposed based on a joint channel estimation ...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
In previous work, we have shown that in the case of multiple antennas and/or oversampling, FIR ZF eq...
International audienceThe problem of blind joint FIR-MIMO channel and data estimation is addressed i...
This paper presents a novel approach to blind equalization (deconvolution), which is based on direct...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
A subspace-based blind channel identification algorithm using only the fact that the received signal...
An eigenfilter based blind channel estimation technique of estimating the channel state information ...
We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood ...
The blind and adaptive equalization or identification of communication channels is a problem of impo...
The problem of filtering a source of known statistics in noise and/or interference of unknown statis...
This thesis deals with the blind channel identification / equalization problem. Conventional non-bli...
Adaptive channel equalization without resorting to a training sequence is often referred to as blind...
This paper addresses the problems of blind channel estimation and symbol detection with second order...
This paper presents a novel optimization method for blind multi-channel identification. The formulat...
A blind adaptive algorithm for channel equalisation is proposed based on a joint channel estimation ...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
In previous work, we have shown that in the case of multiple antennas and/or oversampling, FIR ZF eq...
International audienceThe problem of blind joint FIR-MIMO channel and data estimation is addressed i...
This paper presents a novel approach to blind equalization (deconvolution), which is based on direct...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
A subspace-based blind channel identification algorithm using only the fact that the received signal...
An eigenfilter based blind channel estimation technique of estimating the channel state information ...
We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood ...
The blind and adaptive equalization or identification of communication channels is a problem of impo...
The problem of filtering a source of known statistics in noise and/or interference of unknown statis...
This thesis deals with the blind channel identification / equalization problem. Conventional non-bli...
Adaptive channel equalization without resorting to a training sequence is often referred to as blind...
This paper addresses the problems of blind channel estimation and symbol detection with second order...