Cover image for New directions in statistical signal processing : from systems to brain
Title:
New directions in statistical signal processing : from systems to brain
Series:
Neural information processing series
Publication Information:
Cambridge, MA : The MIT Press, 2007
ISBN:
9780262083485

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30000010159071 QP363.3 N48 2007 Open Access Book Book
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Summary

Summary

Leading researchers in signal processing and neural computation present work aimed at promoting the interaction and cross-fertilization between the two fields.

Signal processing and neural computation have separately and significantly influenced many disciplines, but the cross-fertilization of the two fields has begun only recently. Research now shows that each has much to teach the other, as we see highly sophisticated kinds of signal processing and elaborate hierachical levels of neural computation performed side by side in the brain. In New Directions in Statistical Signal Processing , leading researchers from both signal processing and neural computation present new work that aims to promote interaction between the two disciplines.The book's 14 chapters, almost evenly divided between signal processing and neural computation, begin with the brain and move on to communication, signal processing, and learning systems. They examine such topics as how computational models help us understand the brain's information processing, how an intelligent machine could solve the "cocktail party problem" with "active audition" in a noisy environment, graphical and network structure modeling approaches, uncertainty in network communications, the geometric approach to blind signal processing, game-theoretic learning algorithms, and observable operator models (OOMs) as an alternative to hidden Markov models (HMMs).


Author Notes

Jos#65533; C. Pr#65533;ncipe is Distinguished Professor of Electrical and Biomedical Engineering at the University of Florida, Gainesville, where he is BellSouth Professor and Founder and Director of the Computational NeuroEngineering Laboratory.


Table of Contents

Suzanna BeckerDavid MumfordSimon Haykin and Zhe ChenVikram KrishnamurthyTimothy R. FieldRobert Legenstein and Wolfgang MaassMartin J. Wainwright and Michael I. JordanHans-Georg Zimmermann and Ralph Grothmann and Anton Maximilian Schafer and Christoph TietzSuhas N. DiggaviFrank R. Kschischang and Masoud ArdakaniClaude Berrou and Charlotte Langlais and Fabrice SeguinKonstantinos DiamantarasGeoffrey J. GordonHerbert Jaeger and Mingjie Zhao and Klaus Kretzschmar and Tobias Oberstein and Dan Popovici and Andreas Kolling
Series Forewordp. vii
Prefacep. ix
1 Modeling the Mind: From Circuits to Systemsp. 1
2 Empirical Statistics and Stochastic Models for Visual Signalsp. 23
3 The Machine Cocktail Party Problemp. 51
4 Sensor Adaptive Signal Processing of Biological Nanotubes (Ion Channels) at Macroscopic and Nano Scalesp. 77
5 Spin Diffusion: A New Perspective in Magnetic Resonance Imagingp. 119
6 What Makes a Dynamical System Computationally Powerful?p. 127
7 A Variational Principle for Graphical Modelsp. 155
8 Modeling Large Dynamical Systems with Dynamical Consistent Neural Networksp. 203
9 Diversity in Communication: From Source Coding to Wireless Networksp. 243
10 Designing Patterns for Easy Recognition: Information Transmission with Low-Density Parity-Check Codesp. 287
11 Turbo Processingp. 307
12 Blind Signal Processing Based on Data Geometric Propertiesp. 337
13 Game-Theoretic Learningp. 379
14 Learning Observable Operator Models via the Efficient Sharpening Algorithmp. 417
Referencesp. 465
Contributorsp. 509
Indexp. 513