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IEEE Transactions on Wireless Communications

Publication date: 2005-11-01
Pages: 2945 - 2955
Publisher: Institute of Electrical and Electronics Engineers

Author:

Rousseaux, Olivier
Leus, Geert ; Stoica, Petre ; Moonen, Marc

Keywords:

SISTA, Science & Technology, Technology, Engineering, Electrical & Electronic, Telecommunications, Engineering, block transmission, maximum-likelihood (ML) estimation, stationary multipath channel, training sequence, BLIND, SUBSPACE, 0805 Distributed Computing, 0906 Electrical and Electronic Engineering, 1005 Communications Technologies, Networking & Telecommunications, 4006 Communications engineering, 4008 Electrical engineering, 4606 Distributed computing and systems software

Abstract:

In this paper, we address the problem of identifying convolutive channels using a Gaussian maximum-likelihood (ML) approach when short training sequences (possibly shorter than the channel impulse-response length) are periodically inserted in the transmitted signal. We consider the case where the channel is quasi-static (i.e., the sampling period is several orders of magnitude smaller than the coherence time of the channel). Several training sequences can thus be used in order to produce the channel estimate. The proposed method can be classified as semiblind and exploits all channel-output samples containing contributions from the training sequences (including those containing contributions from the unknown surrounding data symbols). Experimental results show that the proposed method closely approaches the Cramer-Rao bound and outperforms existing training-based methods (which solely exploit the channel-output samples containing contributions from the training sequences only). Existing semiblind ML methods are tested as well and appear to be outperformed by the proposed method in the considered context. A major advantage of the proposed approach is its computational complexity, which is significantly lower than that of existing semiblind methods. © 2005 IEEE.