DocumentCode :
1051322
Title :
Low-Complexity Approaches to Slepian–Wolf Near-Lossless Distributed Data Compression
Author :
Coleman, Todd P. ; Lee, Anna H. ; Médard, Muriel ; Effros, Michelle
Author_Institution :
Dept. of Electr. & Comput. Eng., Illinois Univ., Champaign, IL
Volume :
52
Issue :
8
fYear :
2006
Firstpage :
3546
Lastpage :
3561
Abstract :
This paper discusses the Slepian-Wolf problem of distributed near-lossless compression of correlated sources. We introduce practical new tools for communicating at all rates in the achievable region. The technique employs a simple "source-splitting" strategy that does not require common sources of randomness at the encoders and decoders. This approach allows for pipelined encoding and decoding so that the system operates with the complexity of a single user encoder and decoder. Moreover, when this splitting approach is used in conjunction with iterative decoding methods, it produces a significant simplification of the decoding process. We demonstrate this approach for synthetically generated data. Finally, we consider the Slepian-Wolf problem when linear codes are used as syndrome-formers and consider a linear programming relaxation to maximum-likelihood (ML) sequence decoding. We note that the fractional vertices of the relaxed polytope compete with the optimal solution in a manner analogous to that observed when the "min-sum" iterative decoding algorithm is applied. This relaxation exhibits the ML-certificate property: if an integral solution is found, it is the ML solution. For symmetric binary joint distributions, we show that selecting easily constructable "expander"-style low-density parity check codes (LDPCs) as syndrome-formers admits a positive error exponent and therefore provably good performance
Keywords :
binary codes; data compression; iterative decoding; linear programming; maximum likelihood decoding; parity check codes; source coding; LDPC; Slepian-Wolf problem; binary joint distribution; encoding; iterative decoding method; linear programming; low-density parity check code; maximum-likelihood sequence decoding; near-lossless distributed data compression; source correlation; source-splitting strategy; syndrome-former; Channel coding; Data compression; Encoding; Iterative algorithms; Iterative decoding; Laboratories; Linear code; Linear programming; Maximum likelihood decoding; Signal processing algorithms; Block codes; communication systems; data compression; decoding; iterative methods;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2006.878215
Filename :
1661834
Link To Document :
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