A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data detection of single-input multiple-output (SIMO) systems. The joint ML optimization of the channel and data estimation is decomposed into an iterative optimization loop. An efficient global optimization algorithm termed as the repeated weighted boosting aided search is employed first to identify the unknown SIMO channel model, and then the Viterbi algorithm is used for the maximum likelihood sequence estimation of the unknown data sequence. A simulation example is used for demonstrating the efficiency of this joint ML optimization scheme designed for blind adaptive SIMO systems
International audienceIn this paper, we are interested in adaptive blind channel identification of s...
In this paper, we are interested in blind identification of sparse single-input multiple-output (SIM...
In wireless communication systems, channel state information is often assumed to be available at the...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
Abstract — A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation ...
Semi-blind joint maximum likelihood (ML) channel estimation and data detection is proposed for multi...
In order to establish the optimal receiver strategy, in terms of error rate for Single Input Multi O...
Abstract—Blind and semiblind adaptive schemes are proposed for joint maximum likelihood (ML) channel...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
In multi-antenna communication systems, channel information is often not known at the receiver. To f...
The demand for high data rate reliable communications poses great challenges to the next generation ...
A blind adaptive algorithm for channel equalisation is proposed based on a joint channel estimation ...
Abstract—An efficient and high-performance semi-blind scheme is proposed for Multiple-Input Multiple...
International audienceIn this paper, we are interested in blind identification of sparse single-inpu...
International audienceIn this paper, we are interested in adaptive blind channel identification of s...
In this paper, we are interested in blind identification of sparse single-input multiple-output (SIM...
In wireless communication systems, channel state information is often assumed to be available at the...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
Abstract — A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation ...
Semi-blind joint maximum likelihood (ML) channel estimation and data detection is proposed for multi...
In order to establish the optimal receiver strategy, in terms of error rate for Single Input Multi O...
Abstract—Blind and semiblind adaptive schemes are proposed for joint maximum likelihood (ML) channel...
Deterministic blind identification algorithms of single-input and multi-output (SIMO) systems can ef...
approach is presented to solve the joint blind channel identi-fication and blind symbol estimation p...
In multi-antenna communication systems, channel information is often not known at the receiver. To f...
The demand for high data rate reliable communications poses great challenges to the next generation ...
A blind adaptive algorithm for channel equalisation is proposed based on a joint channel estimation ...
Abstract—An efficient and high-performance semi-blind scheme is proposed for Multiple-Input Multiple...
International audienceIn this paper, we are interested in blind identification of sparse single-inpu...
International audienceIn this paper, we are interested in adaptive blind channel identification of s...
In this paper, we are interested in blind identification of sparse single-input multiple-output (SIM...
In wireless communication systems, channel state information is often assumed to be available at the...