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Intelligent Signal Processing

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Simon Haykin, McMaster University, Canada and Bart Kosko, University of Southern California.
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0780 36010 9
May 2001
Hardback
608pp


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IEEE Press is proud to present the first selected reprint volume devoted to the new field of
intelligent signal processing (ISP). ISP differs fundamentally from the classical approach to
statistical signal processing in that it models the input-out-put behaviour of a complex system
by using "intelligent" or "model-free" techniques rather than relying on the shortcomings of a
mathematical model. ISP systems extract information from incoming signal and noise data and
makes few assumptions about the statistical structure of signals and their environment.
Intelligent Signal Processing explores how ISP tools address the problems of practical neural
systems, new signal data, and blind fuzzy approximators.
The editors have compiled 20 articles written by prominent researchers covering diverse
practical applications of this nascent topic, exposing the reader to the signal processing power
of learning and adaptive systems. This essential reference is intended for researchers,
professional engineers, and scientists working in statistical signal processing and its
applications in various fields such as humanistic intelligence, stochastic resonance, financial
markets, noise processing optimisation, pattern recognition, signal detection, speech
processing, and sensor fusion. Intelligent Signal Processing is also invaluable for graduate
students and academics with a background in computer science, computer engineering, or
electrical engineering.
Contents:
- Preface
- List of Contributors
- Humanistic Intelligence: "Wear Comp" As a New Framework and Application
for Intelligent Signal Processing
- Adaptive Stochastic Resonance
- Learning in the Presence of Noise
- Incorporating Prior Information in Machine Learning by Creating Virtual
Examples
- Deterministic Annealing for Clustering, Compression, Classification,
Regression, and Speech recognition.
- Local Dynamic Modeling with Self-Organizing Maps and Applications to
Nonlinear System Identification and Control
- A Signal Processing Framework Based on Dynamic Neural Networks with Application to Problems in Adaptation, Filtering and Classification
- Semiparametric Support Vector Machines for Nonlinear Model Estimation
- Gradient-Based Learning Applied to Document Recognition
- Pattern Recognition Using A Family of Design Algorithms Based Upon Generalized Probabilistic Descent Method
- An Approach to Adaptive Classification
- Reduced-Rank Intelligent Signal Processing with Application to Radar
- Signal Detection in a Nonstationary Environment
- Reformulated as an Adaptive Pattern Classification Problem
- Data Representation Using Mixtures of Principal Components
- Image Denoising by Sparse Code Shrinkage
- Index
- About the Editors
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