Abstract We consider the Cramer-Rao bound (CRB) for data-aided channel estimation for OFDM with known symbol padding (KSP-OFDM). The pilot symbols used to estimate the channel are positioned not only in the guard interval but also on some of the OFDM carriers, in order to improve the estimation accuracy for a given guard interval length. As the true CRB is very hard to evaluate, we derive an approximate analytical expression for the CRB, that is, the Gaussian CRB (GCRB), which is accurate for large block sizes. This derivation involves an invertible linear transformation of the received samples, yielding an observation vector of which a number of components are (nearly) independent of the unknown information-bearing data symbols. The low SN...
It is well known that iterative channel estimation and OFDM signals detection can significantly impr...
Channel estimation is an important module for improving the performance of the orthogonal frequency ...
Several contributions have been made on using Compressed Sensing (CS) for sparse channel estimation ...
In this paper, we derive the Cramer-Rao bound (CRB) for data-aided channel estimation for OFDM with ...
In this paper, we propose an iterative 'turbo' channel estimation algorithm for known symbol padding...
In this paper we derive the Cramer-Rao bound (CRB) for the estimation of a multiple-input multiple-o...
In this paper, we propose an iterative joint DA/DD channel estimation algorithm for known symbol pad...
This paper proposes a new iterative channel estimation algorithm for known symbol padding (KSP) Orth...
Abstract — We consider superimposing pilot symbols on to data symbols for channel estimation for Ort...
Abstract In this paper, we consider different types of guard intervals for OFDM systems, i.e. cyclic...
In this paper, OFDM data-aided channel estimation based on the decimation of the Channel Impulse Res...
Focusing on transmit diversity orthogonal frequency-division multiplexing (OFDM) transmission throu...
The performance of a mobile MIMO-OFDM system de-pends on the ability of the system to accurately acc...
We propose three iterative superimposed-pilot based channel estimators for Orthogonal Frequency Divi...
We propose an iterative decision-directed joint frequency offset (FO) and channel estimation algorit...
It is well known that iterative channel estimation and OFDM signals detection can significantly impr...
Channel estimation is an important module for improving the performance of the orthogonal frequency ...
Several contributions have been made on using Compressed Sensing (CS) for sparse channel estimation ...
In this paper, we derive the Cramer-Rao bound (CRB) for data-aided channel estimation for OFDM with ...
In this paper, we propose an iterative 'turbo' channel estimation algorithm for known symbol padding...
In this paper we derive the Cramer-Rao bound (CRB) for the estimation of a multiple-input multiple-o...
In this paper, we propose an iterative joint DA/DD channel estimation algorithm for known symbol pad...
This paper proposes a new iterative channel estimation algorithm for known symbol padding (KSP) Orth...
Abstract — We consider superimposing pilot symbols on to data symbols for channel estimation for Ort...
Abstract In this paper, we consider different types of guard intervals for OFDM systems, i.e. cyclic...
In this paper, OFDM data-aided channel estimation based on the decimation of the Channel Impulse Res...
Focusing on transmit diversity orthogonal frequency-division multiplexing (OFDM) transmission throu...
The performance of a mobile MIMO-OFDM system de-pends on the ability of the system to accurately acc...
We propose three iterative superimposed-pilot based channel estimators for Orthogonal Frequency Divi...
We propose an iterative decision-directed joint frequency offset (FO) and channel estimation algorit...
It is well known that iterative channel estimation and OFDM signals detection can significantly impr...
Channel estimation is an important module for improving the performance of the orthogonal frequency ...
Several contributions have been made on using Compressed Sensing (CS) for sparse channel estimation ...