In this paper, we address the problem of estimating sparse communication channels in OFDM systems. We consider the case where carrier frequency offset is present. The problem of estimation is then approached by maximizing a regularized (modified) likelihood function. This regularized likelihood function includes a new term accounting for the a priori probability density function for the parameters, represented by a Gaussian mean-variance mixture. The maximization of the regularized likelihood function is carried out by using the Expectation-Maximization (EM) algorithm. We show that the E-step in the proposed algorithm has a closed-form solution, and in the M-step, the cost function is concentrated in one variable (carrier frequency offset)
A novel efficient time domain threshold based sparse channel estimation technique is proposed for or...
Abstract — Blind estimation of the OFDM carrier frequency offset (CFO) is studied in this paper. Max...
Bayesian approaches for sparse signal recovery have enjoyed a long-standing history in signal proces...
Research Doctorate - Doctor of Philosophy (PhD)This thesis addresses the general problem of channel ...
Abstract -We propose an EM-based algorithm to efficiently detect transmitted data in an OFDM system ...
In this paper, a joint channel, carrier-frequency-offset (CFO) and noise-variance estimation scheme ...
The impulse response of a typical wireless multipath channel can be modeled as a tapped delay line f...
Several contributions have been made on using Compressed Sensing (CS) for sparse channel estimation ...
In orthogonal frequency division modulation (OFDM) communication systems, channel state information ...
Estimating a channel that is subject to frequency-selective Rayleigh fading is a challenging proble...
International audienceUltra wideband (UWB) communications involve very sparse channels, since the ba...
International audienceThe optimal tradeoff among the channel estimation performance, spectrum effici...
Pilot Aided Channel Estimation (PACE) in OFDM systems uses training sequences to estimate the channe...
Compressive sensing (CS) based sparse channel estimation requires optimal pilot patterns, whose corr...
This paper examines the problem of multipath channel esti-mation in single-antenna orthogonal freque...
A novel efficient time domain threshold based sparse channel estimation technique is proposed for or...
Abstract — Blind estimation of the OFDM carrier frequency offset (CFO) is studied in this paper. Max...
Bayesian approaches for sparse signal recovery have enjoyed a long-standing history in signal proces...
Research Doctorate - Doctor of Philosophy (PhD)This thesis addresses the general problem of channel ...
Abstract -We propose an EM-based algorithm to efficiently detect transmitted data in an OFDM system ...
In this paper, a joint channel, carrier-frequency-offset (CFO) and noise-variance estimation scheme ...
The impulse response of a typical wireless multipath channel can be modeled as a tapped delay line f...
Several contributions have been made on using Compressed Sensing (CS) for sparse channel estimation ...
In orthogonal frequency division modulation (OFDM) communication systems, channel state information ...
Estimating a channel that is subject to frequency-selective Rayleigh fading is a challenging proble...
International audienceUltra wideband (UWB) communications involve very sparse channels, since the ba...
International audienceThe optimal tradeoff among the channel estimation performance, spectrum effici...
Pilot Aided Channel Estimation (PACE) in OFDM systems uses training sequences to estimate the channe...
Compressive sensing (CS) based sparse channel estimation requires optimal pilot patterns, whose corr...
This paper examines the problem of multipath channel esti-mation in single-antenna orthogonal freque...
A novel efficient time domain threshold based sparse channel estimation technique is proposed for or...
Abstract — Blind estimation of the OFDM carrier frequency offset (CFO) is studied in this paper. Max...
Bayesian approaches for sparse signal recovery have enjoyed a long-standing history in signal proces...