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Efficient joint source-channel decoding of multi-state Markov sequences

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Abstract
In this study, joint source-channel decoding for non-binary source samples is conducted. The non-binary source samples can be modelled as the output of a multi-state Markov chain (MC). As the source samples are directly transmitted after channel coding without source compression, the transmitted signals can be highly correlated. At the receiver, the multi-state MC module can be designed to exploit the statistical correlation of source samples to improve the error correcting performance. However, as the number of states is increased, the multi-state MC module requires high computational complexity. To alleviate this problem, a simplified MC module is proposed. In the simplified MC module, the multi-state MC is replaced with multiple number of two-state MCs each of which exploits bit-level correlation of samples. Simulation results demonstrate that the simplified MC module can lead to competitive reduction in the required signal-to-noise ratio in comparison with the multi-state MC module with reduced computational complexity.
Author(s)
Kim, H.Har, DongsooMao, Z-H.Sun, M.Lee, Heung-No
Issued Date
2012-06
Type
Article
DOI
10.1049/iet-com.2011.0840
URI
https://scholar.gist.ac.kr/handle/local/15923
Publisher
Institution of Engineering and Technology
Citation
IET Communications, v.6, no.9, pp.1038 - 1044
ISSN
1751-8628
Appears in Collections:
Department of Electrical Engineering and Computer Science > 1. Journal Articles
Graduate School of AI Policy and Strategy > 1. Journal Articles
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