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This dissertation presents a graph-based framework for efficient transmission of correlated sources over multiuser channels, including practical applications in sensor networks, wireless cellular systems, and broadcasting systems.
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A Graph-based Framework for Transmission of Correlated Sourcesover Multiuser Channels Suhan Choi May 2006
Multiuser Communication Scenarios • Practical Applications • Sensor Networks • Wireless Cellular Systems, Wireless LAN • Broadcasting Systems Many-To-One Communications One-To-Many Communications
Contents of Dissertation • Many-to-One Communications (Multiple Access Channels) • Channel Coding Problem • Source Coding Problem • Examples and Interpretations • One-to-Many Communications (Broadcast Channels) • Channel Coding Problem • Source Coding Problem • Interpretation • Conclusion & Future Research Issues
Outline of the Presentation • Many-to-One Communications • Preliminaries • Channel Coding Problem • Source Coding Problem • Motivation & Remarks • Example • Conclusion & Future Research Issues
Outline • Many-to-One Communications • Preliminaries • Channel Coding Problem • Source Coding Problem • Motivation & Remarks • Example • Conclusion & Future Research Issues
A 1 B 2 C Definition of Bipartite Graphs
Semi-Regular Bipartite Graphs 1 1 1 1 2 2 2 2 3 3 4 4 3 3 5 5 4 4 6 6
Nearly Semi-Regular Bipartite Graphs 1 1 2 2 3 4 3 5 4 6
Strongly Typical Sequences • Non-typical set
Outline • Many-to-One Communications • Preliminaries • Channel Coding Problem • Source Coding Problem • Motivation & Remarks • Example • Conclusion & Future Research Issues
Problem Formulation:MAC with Correlated Messages Channel Encoder 1 MAC Channel Decoder Channel Encoder 2 Correlated Independent
Channel Encoder 1 MAC Channel Decoder Channel Encoder 2 Problem Formulation: Transmission System
Remark on Achievable Rates & Capacity Region • Find a sequence of nearly semi-regular graphs • The number of vertices & the degrees are increasing exponentially with given rates • Edges from these graphs are reliably transmitted → Rates are achievable • Definition: Capacity region, • The set of all achievable tuple of rates • Goal: Find the capacity region
An Achievable Rate Region for the MAC with Correlated Messages
Sender 1 Codewords Sender 2 Codewords Sketch of the Proof of Theorem 1 (3)
graph generation Sender 1 Codewords Sender 2 Codewords Sketch of the Proof of Theorem 1 (5)
Converse Theorem for the Sum-Rate of the MAC with Correlated Messages
Outline • Many-to-One Communications • Preliminaries • Channel Coding Problem • Source Coding Problem • Motivation & Remarks • Example • Conclusion & Future Research Issues
Source Decoder Source Encoder 1 Source Encoder 2 Source Coding Problem(Representation of Correlated Sources using nearly semi-regular bipartite graphs)
Remark on Achievable Rates & Our Goal • Find a sequence of nearly semi-regular graphs • The number of vertices & the degrees are increasing exponentially with given rates • Given sources are reliably represented by these graphs → Rates are achievable • The achievable rate region: • The set of all achievable tuple of rates • Goal: Find the achievable region
graph generation Sketch of the Proof of Theorem 3 (3)
Outline • Many-to-One Communications • Preliminaries • Channel Coding Problem • Source Coding Problem • Motivation & Remarks • Example • Conclusion & Future Research Issues
Typicality Graph Graph Nearly Semi-regular Bipartite Graph Motivation: Why we choose graphs? • Jointly Typicality can be captured by the graph
A Graph-Based Framework Modular approach in multiuser channels Fundamental Concept: Jointly typicality Encoding processes Source coding: map correlated sources into edges of graphs Channel coding: send edges of these graphs reliably Encoder 1 MAC Decoder Encoder 2 Source Encoder 1 Channel Encoder 1 MAC Channel Decoder Source Decoder Source Encoder 2 Channel Encoder 2 Transmission of Correlated Sources over a Multiple Access Channel (MAC)
Outline • Many-to-One Communications • Preliminaries • Channel Coding Problem • Source Coding Problem • Motivation & Remarks • Example • Conclusion & Future Research Issues
Gaussian MAC with Jointly Gaussian Channel Input • Gaussian MAC
Gaussian MAC with Correlated Messages • Independent vs. Correlated Codewords
Outline • Many-to-One Communications • Preliminaries • Channel Coding Problem • Source Coding Problem • Motivation & Remarks • Example • Conclusion & Future Research Issues
Conclusion • Many-to-One/One-to-Many Communication Problems • Channel coding problem → Transmission of correlated messages (edges of graphs) over the channel • Source Coding Problem→ Representation of Correlated Sources into graphs • Graph-based framework for transmission of correlated sources over multiuser channels • Modular architecture • Interface between source and channel coding→ Nearly semi-regular graphs
Future Research Issues • More detailed characterization of the structure of bipartite graphs • Number of different equivalence class with particular parameters • Relation between probability distributions and equivalence classes • Construction of practical codes for MAC and BC with correlated sources