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Networked Slepian–Wolf: Theory, Algorithms, and Scaling Laws R˘azvan Cristescu, Member, IEEE, Baltasar Beferull-Lozano, Member, IEEE, Martin Vetterli, Fellow, IEEE IEEE Transactions on Information Theory, Dec., 2005
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Outline Introduction – Slepian–Wolf Coding Problem Formulation – Single Sink Case – Multiple Sink Case Single Sink Data Gathering Multiple Sink Data Gathering – Heuristic Approximation Algorithms Numerical Simulations Conclusion
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Introduction Independent encoding/decoding Low coding gain Optimal transmission structure: Shortest path tree Encoding with explicit communication – Nodes can exploit the data correlation only when the data of other nodes is locally at them). – Without knowing the correlation among nodes a priori. Distributed source coding: Slepian–Wolf coding – Allow nodes to use joint coding of correlated data without explicit communication Assume a prior knowledge of global network structure and correlation structure is availlable Exploiting data correlation without explicit communication (coding at each node Independent ly) – Node can exploit data correlation among nodes without explicit communication. Optimal transmission structure: Shortest path tree
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Slepian–Wolf coding
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Problem Single Sink Case Multiple Sink Case Assume the Slepian–Wolf coding is used. Then, (1)Find a rate allocation that minimizes the total network cost. (2) Find an optimal transmission structure.
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Preposition Proposition 1: Separation of source coding and transmission structure optimization.
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Single-Sink Data Gathering Optimal Transmission Structure: – Shortest Path Tree
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Single-Sink Data Gathering Optimization problem Rate Allocation
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Proof Consider that with weights Since Thus, assigningYields optimal
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Rate Allocation R 1 : the largest R 1 : the smallest
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Example
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Multiple Sink Case For Node X 3, the optimal transmission structure is the minimum-weight tree rooted at X3 and span the sinks S 1 and S 2. the minimum Steiner tree (NP-complete)
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Steiner Tree Euclidean Steiner tree problem – Given N points in the plane, it is required to connect them by lines of minimum total length in such a way that any two points may be interconnected by line segments either directly or via other points and line segments.line segments
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Steiner Tree Steiner tree in graphs – Given a weighted graph G(V, E, w) and a subset of its vertices S V, find a tree of minimal weight which includes all vertices in S. 5 5 2 6 2 2 3 4 13 2 2 3 4 Terminal Steiner points
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The Minimum Steiner Tree
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Existing Approximation If the weights of the graph are the Euclidean distances, – the Euclidean Steiner tree problem – The existing approximation PTAS [3], with approximation ratio (1+ ), > 0.
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Proposed Heuristic Approximation Algorithms Assumption : Nodes that are outside k-hop neighborhood count very little, in terms of rate, in the local entropy conditioning,
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Numerical Simulations Source model: multivariate Gaussian random field. Correlation model: an exponential model that decays exponentially with the distance between the nodes.
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Numerical Simulations
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Conclusions This paper addressed the problem of joint rate allocation and transmission structure optimization for sensor networks. It was shown that – in single-sink case the optimal transmission structure is the shortest path tree. – in the multiple-sink case the optimization of transmission structure is NP-complete. Steiner tree problem
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