DocumentCode :
991609
Title :
On Low-Complexity Maximum-Likelihood Decoding of Convolutional Codes
Author :
Luo, Jie
Author_Institution :
Electr. & Comput. Eng. Dept., Colorado State Univ., Fort Collins, CO
Volume :
54
Issue :
12
fYear :
2008
Firstpage :
5756
Lastpage :
5760
Abstract :
This letter considers the average complexity of maximum-likelihood (ML) decoding of convolutional codes. ML decoding can be modeled as finding the most probable path taken through a Markov graph. Integrated with the Viterbi algorithm (VA), complexity reduction methods often use the sum log likelihood (SLL) of a Markov path as a bound to disprove the optimality of other Markov path sets and to consequently avoid exhaustive path search. In this letter, it is shown that SLL-based optimality tests are inefficient if one fixes the coding memory and takes the codeword length to infinity. Alternatively, optimality of a source symbol at a given time index can be testified using bounds derived from log likelihoods of the neighboring symbols. It is demonstrated that such neighboring log likelihood (NLL)-based optimality tests, whose efficiency does not depend on the codeword length, can bring significant complexity reduction. The results are generalized to ML sequence detection in a class of discrete-time hidden Markov systems.
Keywords :
Viterbi decoding; computational complexity; convolutional codes; hidden Markov models; maximum likelihood decoding; ML sequence detection; Markov graph; Viterbi algorithm; codeword length; coding memory; complexity reduction methods; convolutional codes; discrete-time hidden Markov systems; low-complexity maximum-likelihood decoding; neighboring log likelihood-based optimality tests; sum log likelihood-based optimality test; Convolutional codes; H infinity control; Hidden Markov models; Iterative decoding; Lattices; Maximum likelihood decoding; Maximum likelihood detection; Testing; Upper bound; Viterbi algorithm; Coding complexity; Viterbi algorithm (VA); convolutional code; hidden Markov model; maximum-likelihood (ML) decoding;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2008.2006461
Filename :
4675733
Link To Document :
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