We investigate blind and semi-blind maximum likelihood techniques for multiuser multichannel identification. Two blind Deterministic ML methods based on cyclic prediction filters are presented [1]. The Iterative Quadratic ML (IQML) algorithm is used in [1] to solve it: this strategy does not perform well at low SNR and gives biased estimates due to the presence of noise. We propose a modification of IQML that we call DIQML to "denoise" it and explore a second strategy called Pseudo-Quadratic ML (PQML). As proposed in [2], PQML works well only at very high SNR. The solution we present here makes it work well at rather low SNR conditions and outperform DIQML. Like DIQML, PQML is proved to be consistent, asymptotically insensitive to...
In this paper, two probabilistic adaptive algorithms for jointly detecting active users in a DS-CDMA...
Abstract—Blind and semiblind adaptive schemes are proposed for joint maximum likelihood (ML) channel...
Blind channel identification and equalization have recently attracted a great deal of attention due ...
We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood ...
We explore the identifiability conditions for blind and semi-blind multiuser multichannel identifica...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
This paper develops a fast maximum likelihood method for estimating the impulse responses ofmultiple...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
This paper presents a novel optimization method for blind multi-channel identification. The formulat...
In this paper, two probabilistic adaptive algorithms for jointly detecting active users in a DS-CDMA...
Semi-blind joint maximum likelihood (ML) channel estimation and data detection is proposed for multi...
We study the performances of the subspace (SS), cross-relation (CR) and two-step maximum likelihood ...
We present an adaptive algorithm based on the theory of hidden Markov models (HMM) which is capable ...
In this letter, a blind stochastic maximum likelihood (ML) channel estimation algorithm is adapted t...
International audienceIn this paper, different techniques for the estimation of the signal parameter...
In this paper, two probabilistic adaptive algorithms for jointly detecting active users in a DS-CDMA...
Abstract—Blind and semiblind adaptive schemes are proposed for joint maximum likelihood (ML) channel...
Blind channel identification and equalization have recently attracted a great deal of attention due ...
We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood ...
We explore the identifiability conditions for blind and semi-blind multiuser multichannel identifica...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
This paper develops a fast maximum likelihood method for estimating the impulse responses ofmultiple...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
This paper presents a novel optimization method for blind multi-channel identification. The formulat...
In this paper, two probabilistic adaptive algorithms for jointly detecting active users in a DS-CDMA...
Semi-blind joint maximum likelihood (ML) channel estimation and data detection is proposed for multi...
We study the performances of the subspace (SS), cross-relation (CR) and two-step maximum likelihood ...
We present an adaptive algorithm based on the theory of hidden Markov models (HMM) which is capable ...
In this letter, a blind stochastic maximum likelihood (ML) channel estimation algorithm is adapted t...
International audienceIn this paper, different techniques for the estimation of the signal parameter...
In this paper, two probabilistic adaptive algorithms for jointly detecting active users in a DS-CDMA...
Abstract—Blind and semiblind adaptive schemes are proposed for joint maximum likelihood (ML) channel...
Blind channel identification and equalization have recently attracted a great deal of attention due ...