We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood (DML) blind estimation of multiple FIR channels. The first one is a modification of the Iterative Quadratic ML (IQML) algorithm. IQML gives biased estimates of the channel and performs poorly at low SNR due to noise induced bias. The IQML cost function can be “denoised” by eliminating the noise contribution: the resulting algorithm, Denoised IQML (DIQML), gives consistent estimates and outperforms IQML. Furthermore, DIQML is asymptotically globally convergent and hence insensitive to the initialization. Its asymptotic performance does not reach the DML performance though. The second strategy, called Pseudo-Quadratic ML (PQML), is naturally de...
Channel Identification is an important part of wireless communication systems. Radio-Frequency (RF) ...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
The least-squares and the subspace methods are well known approaches for blind channel identificatio...
We investigate blind and semi-blind maximum likelihood techniques for multiuser multichannel identif...
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...
This paper develops a fast maximum likelihood method for estimating the impulse responses ofmultiple...
This paper considers the problem of blind channel estimation of multi channel FIR filters. This is a...
We study the performances of the subspace (SS), cross-relation (CR) and two-step maximum likelihood ...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
International audienceThe problem of blind joint FIR-MIMO channel and data estimation is addressed i...
In this correspondence, we develop adaptive algorithms for multichannel (single-input-multiple-outpu...
This paper presents a novel optimization method for blind multi-channel identification. The formulat...
This paper presents an algorithm of blind identification and equalization of finite-impulse-response...
International audienceIn this paper, we are interested in blind identification of sparse single-inpu...
Channel Identification is an important part of wireless communication systems. Radio-Frequency (RF) ...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
The least-squares and the subspace methods are well known approaches for blind channel identificatio...
We investigate blind and semi-blind maximum likelihood techniques for multiuser multichannel identif...
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...
This paper develops a fast maximum likelihood method for estimating the impulse responses ofmultiple...
This paper considers the problem of blind channel estimation of multi channel FIR filters. This is a...
We study the performances of the subspace (SS), cross-relation (CR) and two-step maximum likelihood ...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
International audienceThe problem of blind joint FIR-MIMO channel and data estimation is addressed i...
In this correspondence, we develop adaptive algorithms for multichannel (single-input-multiple-outpu...
This paper presents a novel optimization method for blind multi-channel identification. The formulat...
This paper presents an algorithm of blind identification and equalization of finite-impulse-response...
International audienceIn this paper, we are interested in blind identification of sparse single-inpu...
Channel Identification is an important part of wireless communication systems. Radio-Frequency (RF) ...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
The least-squares and the subspace methods are well known approaches for blind channel identificatio...