Neural Networks for Optimization and Signal Processing

Neural Networks for Optimization and Signal Processing
Title Neural Networks for Optimization and Signal Processing PDF eBook
Author Andrzej Cichocki
Publisher
Total Pages 526
Release 1993-01
Genre Mathematical optimization
ISBN 9783519064442

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Neural Networks For Optimization And Signal Processing

Neural Networks For Optimization And Signal Processing
Title Neural Networks For Optimization And Signal Processing PDF eBook
Author A. Cichocki
Publisher
Total Pages 0
Release
Genre
ISBN

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Neural Networks for Optimization and Signal Processing

Neural Networks for Optimization and Signal Processing
Title Neural Networks for Optimization and Signal Processing PDF eBook
Author Andrzej Cichocki
Publisher John Wiley & Sons
Total Pages 578
Release 1993-06-07
Genre Computers
ISBN

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A topical introduction on the ability of artificial neural networks to not only solve on-line a wide range of optimization problems but also to create new techniques and architectures. Provides in-depth coverage of mathematical modeling along with illustrative computer simulation results.

Handbook of Neural Network Signal Processing

Handbook of Neural Network Signal Processing
Title Handbook of Neural Network Signal Processing PDF eBook
Author Yu Hen Hu
Publisher CRC Press
Total Pages 408
Release 2018-10-03
Genre Technology & Engineering
ISBN 1420038613

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The use of neural networks is permeating every area of signal processing. They can provide powerful means for solving many problems, especially in nonlinear, real-time, adaptive, and blind signal processing. The Handbook of Neural Network Signal Processing brings together applications that were previously scattered among various publications to provide an up-to-date, detailed treatment of the subject from an engineering point of view. The authors cover basic principles, modeling, algorithms, architectures, implementation procedures, and well-designed simulation examples of audio, video, speech, communication, geophysical, sonar, radar, medical, and many other signals. The subject of neural networks and their application to signal processing is constantly improving. You need a handy reference that will inform you of current applications in this new area. The Handbook of Neural Network Signal Processing provides this much needed service for all engineers and scientists in the field.

Cellular Neural Networks

Cellular Neural Networks
Title Cellular Neural Networks PDF eBook
Author Martin Hänggi
Publisher Springer Science & Business Media
Total Pages 155
Release 2013-03-09
Genre Technology & Engineering
ISBN 1475732201

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Cellular Neural Networks (CNNs) constitute a class of nonlinear, recurrent and locally coupled arrays of identical dynamical cells that operate in parallel. ANALOG chips are being developed for use in applications where sophisticated signal processing at low power consumption is required. Signal processing via CNNs only becomes efficient if the network is implemented in analog hardware. In view of the physical limitations that analog implementations entail, robust operation of a CNN chip with respect to parameter variations has to be insured. By far not all mathematically possible CNN tasks can be carried out reliably on an analog chip; some of them are inherently too sensitive. This book defines a robustness measure to quantify the degree of robustness and proposes an exact and direct analytical design method for the synthesis of optimally robust network parameters. The method is based on a design centering technique which is generally applicable where linear constraints have to be satisfied in an optimum way. Processing speed is always crucial when discussing signal-processing devices. In the case of the CNN, it is shown that the setting time can be specified in closed analytical expressions, which permits, on the one hand, parameter optimization with respect to speed and, on the other hand, efficient numerical integration of CNNs. Interdependence between robustness and speed issues are also addressed. Another goal pursued is the unification of the theory of continuous-time and discrete-time systems. By means of a delta-operator approach, it is proven that the same network parameters can be used for both of these classes, even if their nonlinear output functions differ. More complex CNN optimization problems that cannot be solved analytically necessitate resorting to numerical methods. Among these, stochastic optimization techniques such as genetic algorithms prove their usefulness, for example in image classification problems. Since the inception of the CNN, the problem of finding the network parameters for a desired task has been regarded as a learning or training problem, and computationally expensive methods derived from standard neural networks have been applied. Furthermore, numerous useful parameter sets have been derived by intuition. In this book, a direct and exact analytical design method for the network parameters is presented. The approach yields solutions which are optimum with respect to robustness, an aspect which is crucial for successful implementation of the analog CNN hardware that has often been neglected. `This beautifully rounded work provides many interesting and useful results, for both CNN theorists and circuit designers.' Leon O. Chua

Neural Networks for Intelligent Signal Processing

Neural Networks for Intelligent Signal Processing
Title Neural Networks for Intelligent Signal Processing PDF eBook
Author Anthony Zaknich
Publisher World Scientific
Total Pages 510
Release 2003
Genre Technology & Engineering
ISBN 9812383050

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This book provides a thorough theoretical and practical introduction to the application of neural networks to pattern recognition and intelligent signal processing. It has been tested on students, unfamiliar with neural networks, who were able to pick up enough details to successfully complete their masters or final year undergraduate projects. The text also presents a comprehensive treatment of a class of neural networks called common bandwidth spherical basis function NNs, including the probabilistic NN, the modified probabilistic NN and the general regression NN.

Neural Networks for Signal Processing

Neural Networks for Signal Processing
Title Neural Networks for Signal Processing PDF eBook
Author Bart Kosko
Publisher
Total Pages 424
Release 1992
Genre Computers
ISBN

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Edited by a leading expert in neural networks, this collection of essays explores neural network applications in signal and image processing, function and estimation, robotics and control, associative memories, and electrical and optical neural networks. This reference will be of interest to scientists, engineers, and others working in the neural network field.