Title :
Low-complexity maximum-likelihood detection of coded signals sent over finite-state Markov channels
Author :
Li, Lifang ; Goldsmith, Andrea J.
Author_Institution :
Exeter Group Inc., Los Angeles, CA, USA
fDate :
4/1/2002 12:00:00 AM
Abstract :
We propose a decision-feedback decoder for coded signals transmitted over finite-state Markov channels. The decoder achieves maximum-likelihood sequence detection (in the absence of feedback errors) with very low complexity by exploiting previous bit decisions and the Markov structure of the channel. We also propose a similar decoder, the output-feedback decoder, that does not use previous bit decisions and therefore does not suffer from error propagation. The decoder performance is determined using a new sliding window analysis technique as well as by simulation. Both decoders exhibit excellent bit error rate performance with a relatively low complexity that is independent of the channel decorrelation time
Keywords :
Markov processes; error statistics; maximum likelihood decoding; maximum likelihood detection; modulation coding; source coding; Markov structure; bit decisions; bit error rate performance; coded signals; complexity; decision-feedback decoder; finite-state Markov channels; low-complexity maximum-likelihood detection; maximum-likelihood sequence detection; output-feedback decoder; sliding window analysis technique; Analytical models; Bit error rate; Fading; Feedback; Maximum likelihood decoding; Maximum likelihood detection; Maximum likelihood estimation; Performance analysis; Rayleigh channels; Signal detection;
Journal_Title :
Communications, IEEE Transactions on