Book contents
- Frontmatter
- Dedication
- Contents
- Preface
- Acknowledgments
- Notation
- 1 Introduction
- Part I Preliminaries
- Part II Single-Hop Networks
- 4 Multiple Access Channels
- 5 Degraded Broadcast Channels
- 6 Interference Channels
- 7 Channels with State
- 8 General Broadcast Channels
- 9 Gaussian Vector Channels
- 10 Distributed Lossless Compression
- 11 Lossy Compression with Side Information
- 12 Distributed Lossy Compression
- 13 Multiple Description Coding
- 14 Joint Source–Channel Coding
- Part III Multihop Networks
- Part IV Extensions
- Appendices
- Bibliography
- Common Symbols
- Author Index
- Subject Index
14 - Joint Source–Channel Coding
from Part II - Single-Hop Networks
Published online by Cambridge University Press: 05 June 2012
- Frontmatter
- Dedication
- Contents
- Preface
- Acknowledgments
- Notation
- 1 Introduction
- Part I Preliminaries
- Part II Single-Hop Networks
- 4 Multiple Access Channels
- 5 Degraded Broadcast Channels
- 6 Interference Channels
- 7 Channels with State
- 8 General Broadcast Channels
- 9 Gaussian Vector Channels
- 10 Distributed Lossless Compression
- 11 Lossy Compression with Side Information
- 12 Distributed Lossy Compression
- 13 Multiple Description Coding
- 14 Joint Source–Channel Coding
- Part III Multihop Networks
- Part IV Extensions
- Appendices
- Bibliography
- Common Symbols
- Author Index
- Subject Index
Summary
In Chapters 4 through 9, we studied reliable communication of independent messages over noisy single-hop networks (channel coding), and in Chapters 10 through 13, we studied the dual setting of reliable communication of uncompressed sources over noiseless single-hop networks (source coding). These settings are special cases of the more general information flow problem of reliable communication of uncompressed sources over noisy single-hop networks. As we have seen in Section 3.9, separate source and channel coding is asymptotically sufficient for communicating a DMS over a DMC. Does such separation hold in general for communicating a k-DMS over a DM single-hop network?
In this chapter, we show that such separation does not hold in general. Thus in some multiuser settings it is advantageous to perform joint source–channel coding. We demonstrate this breakdown in separation through examples of lossless communication of a 2-DMS over a DM-MAC and over a DM-BC.
For the DM-MAC case, we show that joint source–channel coding can help communication by utilizing the correlation between the sources to induce statistical cooperation between the transmitters. We present a joint source–channel coding scheme that outperforms separate source and channel coding. We then show that this scheme can be improved when the sources have a common part, that is, a source that both senders can agree on with probability one.
For the DM-BC case, we show that joint source–channel coding can help communication by utilizing the statistical compatibility between the sources and the channel. We first consider a separate source and channel coding scheme based on the Gray–Wyner source coding system and Marton's channel coding scheme. The optimal rate–region for the Gray–Wyner system naturally leads to several definitions of common information between correlated sources. We then describe a joint source–channel coding scheme that outperforms the separate Gray–Wyner and Marton coding scheme.
Finally, we present a general single-hop network that includes as special cases many of themultiuser source and channel settings we discussed in previous chapters. We describe a hybrid source–channel coding scheme for this network.
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- Information
- Network Information Theory , pp. 336 - 360Publisher: Cambridge University PressPrint publication year: 2011