A nonlinear detection technique designed for multiple-antenna assisted receivers employed in space-division multiple-access systems is investigated. We derive the optimal solution of the nonlinear spatial-processing assisted receiver for binary phase shift keying signalling, which we refer to as the Bayesian detector. It is shown that this optimal Bayesian receiver significantly outperforms the standard linear beamforming assisted receiver in terms of a reduced bit error rate, at the expense of an increased complexity, while the achievable system capacity is substantially enhanced with the advent of employing nonlinear detection. Specifically, when the spatial separation expressed in terms of the angle of arrival between the desired and in...
In this paper, a class of nonlinear minimum mean-squared error multiuser detectors is derived based ...
The effectiveness of the recently proposed adaptive Maximum A Posteriori (MAP) receiver in Cusani an...
The paper investigates the application of an emerging learning technique, called support vector mach...
Abstract—A nonlinear beamforming aided detector is proposed for multiple-antenna assisted quadrature...
A nonlinear beamforming aided detector is proposed for multiple-antenna assisted quadrature phase sh...
A powerful symmetrical radial basis function (RBF) aided detector is proposed for nonlinear detectio...
We consider nonlinear detection in rank-deficient multiple-antenna assisted beamforming systems. By ...
In this paper, we propose a powerful symmetric radial basis function (RBF) classifier for nonlinear ...
A nonlinear beamforming assisted detector is proposed for multiple-antenna-aided wireless systems em...
This letter shows that the wireless communication system capacity is greatly enhanced by employing n...
In this paper, we propose a powerful symmetric radial basis function (RBF) classifier for nonlinear ...
The algorithm and the results of a nonlinear detector using a machine learning technique called supp...
Application of Neural Network to signal detection in CDMA multi-user communications Gaussian channe...
We compare the performance of two detection schemes in charge of detecting the presence of a signal ...
We compare the performance of two detection schemes in charge of detecting the presence of a signal ...
In this paper, a class of nonlinear minimum mean-squared error multiuser detectors is derived based ...
The effectiveness of the recently proposed adaptive Maximum A Posteriori (MAP) receiver in Cusani an...
The paper investigates the application of an emerging learning technique, called support vector mach...
Abstract—A nonlinear beamforming aided detector is proposed for multiple-antenna assisted quadrature...
A nonlinear beamforming aided detector is proposed for multiple-antenna assisted quadrature phase sh...
A powerful symmetrical radial basis function (RBF) aided detector is proposed for nonlinear detectio...
We consider nonlinear detection in rank-deficient multiple-antenna assisted beamforming systems. By ...
In this paper, we propose a powerful symmetric radial basis function (RBF) classifier for nonlinear ...
A nonlinear beamforming assisted detector is proposed for multiple-antenna-aided wireless systems em...
This letter shows that the wireless communication system capacity is greatly enhanced by employing n...
In this paper, we propose a powerful symmetric radial basis function (RBF) classifier for nonlinear ...
The algorithm and the results of a nonlinear detector using a machine learning technique called supp...
Application of Neural Network to signal detection in CDMA multi-user communications Gaussian channe...
We compare the performance of two detection schemes in charge of detecting the presence of a signal ...
We compare the performance of two detection schemes in charge of detecting the presence of a signal ...
In this paper, a class of nonlinear minimum mean-squared error multiuser detectors is derived based ...
The effectiveness of the recently proposed adaptive Maximum A Posteriori (MAP) receiver in Cusani an...
The paper investigates the application of an emerging learning technique, called support vector mach...