FROM MAXIMUM LIKELIHOOD TO ITERATIVE DECODING
Networking and Coding
Presented by: Pierre Duhamel, Author(s): Florence Alberge, Ziad Naja, University Paris-Sud, France; Pierre Duhamel, CNRS, France
Iterative decoding is considered in this paper from an optimization point of view. Starting from the optimal maximum likelihood decoding, a (tractable) approximate criterion is derived. The global maximum of the approximate criterion is analyzed: the maximum likelihood solution can be retrieved from the approximate criterion in some particular cases. The classical equations of turbo-decoders can be obtained as an instance of an hybrid Jacobi/Gauss-Seidel implementation of the iterative maximization for the tractable criterion. The extrinsics are a natural consequence of this implementation. In the simulation part, we show a practical application of these results.
Lecture Information
Recorded: | 2011-05-26 15:25 - 15:45, Club E |
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Added: | 22. 6. 2011 03:42 |
Number of views: | 33 |
Video resolution: | 1024x576 px, 512x288 px |
Video length: | 0:20:16 |
Audio track: | MP3 [6.85 MB], 0:20:16 |
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