In wireless communication systems, channel state information is often assumed to be available at the receiver. Traditionally, a training sequence is used to obtain the estimate of the channel. Alternatively, the channel can be identified using known properties of the transmitted signal. However, the computational effort required to find the joint ML solution to the symbol detection and channel estimation problem increases exponentially with the dimension of the problem. To significantly reduce this computational effort, we formulate the joint ML estimation and detection as an integer least-squares problem, and show that for a wide range of signal-to-noise ratios (SNR) and problem dimensions it can be solved via sphere decoding with expected...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
We develop new blind and semi-blind data detectors and channel estimators for orthogonal frequency-d...
We consider joint maximum-likelihood (ML) detection and decoding in multiple-input multiple-output (...
In wireless communication systems, channel state information is often assumed to be available at the...
In multi-antenna communication systems, channel information is often not known at the receiver. To f...
Fast fading wireless environments pose a great challenge for achieving high spectral efficiency in n...
Fast fading wireless environments pose a great challenge for achieving high spectral efficiency in n...
The demand for high data rate reliable communications poses great challenges to the next generation ...
The optimal detection problem in multi-antenna wireless communication systems often reduces to the p...
In multi-antenna communication systems, channel information is often not known at the receiver. To ...
In multi-antenna communication systems, channel information is often not known at the receiver. To f...
In wireless communication systems, the use of multiple antennas at both the transmitter and receiver...
Semi-blind joint maximum likelihood (ML) channel estimation and data detection is proposed for multi...
Abstract—Blind and semiblind adaptive schemes are proposed for joint maximum likelihood (ML) channel...
Next generation wireless systems have to be able to efficiently deal with fast fading environments i...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
We develop new blind and semi-blind data detectors and channel estimators for orthogonal frequency-d...
We consider joint maximum-likelihood (ML) detection and decoding in multiple-input multiple-output (...
In wireless communication systems, channel state information is often assumed to be available at the...
In multi-antenna communication systems, channel information is often not known at the receiver. To f...
Fast fading wireless environments pose a great challenge for achieving high spectral efficiency in n...
Fast fading wireless environments pose a great challenge for achieving high spectral efficiency in n...
The demand for high data rate reliable communications poses great challenges to the next generation ...
The optimal detection problem in multi-antenna wireless communication systems often reduces to the p...
In multi-antenna communication systems, channel information is often not known at the receiver. To ...
In multi-antenna communication systems, channel information is often not known at the receiver. To f...
In wireless communication systems, the use of multiple antennas at both the transmitter and receiver...
Semi-blind joint maximum likelihood (ML) channel estimation and data detection is proposed for multi...
Abstract—Blind and semiblind adaptive schemes are proposed for joint maximum likelihood (ML) channel...
Next generation wireless systems have to be able to efficiently deal with fast fading environments i...
A blind adaptive scheme is proposed for joint maximum likelihood (ML) channel estimation and data de...
We develop new blind and semi-blind data detectors and channel estimators for orthogonal frequency-d...
We consider joint maximum-likelihood (ML) detection and decoding in multiple-input multiple-output (...