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Reduced Complexity Super-Trellis Decoding for Convolutionally Encoded Transmission Over ISI-Channels (1207.4680v3)

Published 19 Jul 2012 in cs.IT and math.IT

Abstract: In this paper we propose a matched encoding (ME) scheme for convolutionally encoded transmission over intersymbol interference (usually called ISI) channels. A novel trellis description enables to perform equalization and decoding jointly, i.e., enables efficient super-trellis decoding. By means of this matched non-linear trellis description we can significantly reduce the number of states needed for the receiver-side Viterbi algorithm to perform maximum-likelihood sequence estimation. Further complexity reduction is achieved using the concept of reduced-state sequence estimation.

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