Channel matrix inversion, which requires significant hardware resource and computational power, is a very challenging problem in MIMO-OFDM systems. Casting the frequency-domain channel matrix into a polynomial matrix, interpolation-based matrix inversion provides a promising solution to this problem. In this paper, we propose novel algorithms for interpolation based matrix inversion, which require little prior information of the channel matrix and enable the use of simple low-complexity interpolators such as spline and low pass filter interpolators. By invoking the central limit theorem, we show that a Gaussian approximation function well characterizes the power of the polynomial coefficients. Some low-complexity and efficient schemes are t...
In this contribution we propose a new way to state and solve the channel equalization problem for an...
In this paper, we discuss the implementation strategies of an explicit matrix inversion technique ba...
The high processing complexity of data detection in the large-scale multiple-input multiple-output (...
Channel matrix inversion, which requires significant hardware resource and computational power, is a...
Channel matrix inversion, which requires significant hardware resource and computational power, is a...
© 2017 IEEE. The great potential of exploiting millimeter wave (mmwave) frequency spectrum for emerg...
We consider massive multiple input multiple output (MIMO) systems with orthogonal frequency division...
This letter proposes simple algorithms for computing a phase shift term, which is introduced to grea...
n this paper we present an architecture for an MMSE filter matrix computation unit for signal detecti...
Abstract: Channel estimation algorithms have a key role in signal detection in MIMO-OFDM systems. In...
This paper addresses piecewise frequency domain interpolation for OFDMA channels when raw estimates ...
International audienceIn this paper, we present an improved channel matrix estimation algorithm for ...
The interest in wireless communications among consumers has exploded since the introduction of the "...
Matrix inversion is an essential computation for various algorithms which are employed in multi-ante...
Linear and non-linear data-detection and precoding algorithms for wideband massive multi-user (MU) m...
In this contribution we propose a new way to state and solve the channel equalization problem for an...
In this paper, we discuss the implementation strategies of an explicit matrix inversion technique ba...
The high processing complexity of data detection in the large-scale multiple-input multiple-output (...
Channel matrix inversion, which requires significant hardware resource and computational power, is a...
Channel matrix inversion, which requires significant hardware resource and computational power, is a...
© 2017 IEEE. The great potential of exploiting millimeter wave (mmwave) frequency spectrum for emerg...
We consider massive multiple input multiple output (MIMO) systems with orthogonal frequency division...
This letter proposes simple algorithms for computing a phase shift term, which is introduced to grea...
n this paper we present an architecture for an MMSE filter matrix computation unit for signal detecti...
Abstract: Channel estimation algorithms have a key role in signal detection in MIMO-OFDM systems. In...
This paper addresses piecewise frequency domain interpolation for OFDMA channels when raw estimates ...
International audienceIn this paper, we present an improved channel matrix estimation algorithm for ...
The interest in wireless communications among consumers has exploded since the introduction of the "...
Matrix inversion is an essential computation for various algorithms which are employed in multi-ante...
Linear and non-linear data-detection and precoding algorithms for wideband massive multi-user (MU) m...
In this contribution we propose a new way to state and solve the channel equalization problem for an...
In this paper, we discuss the implementation strategies of an explicit matrix inversion technique ba...
The high processing complexity of data detection in the large-scale multiple-input multiple-output (...