Compressive estimation of doubly selective channels in multicarrier systems: Leakage effects and sparsity-enhancing processing
Abstract
We consider the application of compressed sensing (CS) to the estimation of doubly selective channels within pulse-shaping multicarrier systems (which include OFDM systems as a special case). By exploiting sparsity in the delay-Doppler domain, CS-based channel estimation allows for an increase in spectral efficiency through a reduction of the number of pilot symbols. For combating leakage effects that limit the delay-Doppler sparsity, we propose a sparsity-enhancing basis expansion and a method for optimizing the basis with or without prior statistical information about the channel. We also present an alternative CS-based channel estimator for (potentially) strongly time-frequency dispersive channels, which is capable of estimating the "off-diagonal" channel coefficients characterizing intersymbol and intercarrier interference (ISI/ICI). For this estimator, we propose a basis construction combining Fourier (exponential) and prolate spheroidal sequences. Simulation results assess the performance gains achieved by the proposed sparsity-enhancing processing techniques and by explicit estimation of ISI/ICI channel coefficients.
Cite
@article{arxiv.0903.2774,
title = {Compressive estimation of doubly selective channels in multicarrier systems: Leakage effects and sparsity-enhancing processing},
author = {Georg Tauboeck and Franz Hlawatsch and Daniel Eiwen and Holger Rauhut},
journal= {arXiv preprint arXiv:0903.2774},
year = {2010}
}
Comments
18 pages, 6 figures; content is identical to published paper version (in IEEE Journal of Selected Topics in Signal Processing - Special Issue on Compressed Sensing), only format is different; this revision contains substantially new material compared with previous (arXiv) revision, also title and author list have changed