A low-complexity maximum likelihood decoder for tail-biting trellisDownload PDFOpen Website

Published: 2013, Last Modified: 15 May 2023EURASIP J. Wirel. Commun. Netw. 2013Readers: Everyone
Abstract: Tail-biting trellises are defined on a circular time axis and can have a smaller number of states than equivalent conventional trellises. Existing circular Viterbi algorithms (CVAs) on the tail-biting trellis are non-convergent and sub-optimal. In this study, we show that the net path metric of each tail-biting path is lower-bounded during the decoding process of the CVA. This property can be applied to remove unnecessary iterations of the CVA and results in a convergent maximum likelihood (ML) decoder. Simulation results show that the proposed algorithm exhibits higher decoding efficiency compared with other existing ML decoders.
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