| Abstract |
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We show how conventional parallel (turbo) and serial concatenated convolutional codes can be used to compress close to the Slepian-Wolf limit ofr correlated binary sources. Conventional refers to codes already used in channel coding. Focusing on the asymmetric case of compression of an equiprobable memoryless binary source with side information at the decoder, the approach is based on modeling the correlation as a channel and using syndromes. The encoding and decoding procedures are explained in detail. The performance achieved is seen to be better than recently published results using nonconventional turbo codes and very close to the Slepian-Wolf limit.
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Additional Information
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Citation:
Angelos D. Liveris, Zixiang Xiong, Costas N. Georghiades,
"Distributed Compression of Binary Sources Using Conventional Parallel and Serial Concatenated Convolutional Codes,"
dcc,
p. 193,
Data Compression Conference (DCC '03),
2003
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