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Cellular Neural Networks and Image Processing

Cellular Neural Networks and Image Processing
Author: Tao Yang
Publisher:
Total Pages: 376
Release: 2002
Genre: Computers
ISBN:

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Yang, who is not identified, applies the design principles of cellular image operators to a hardware platform called cellular neural network (CNN), a VLSI-oriented vision chip invented in 1988. Having presented different local rules in previous works, he here examines many local rule classes that can be implemented by a CNN, exploiting such unique characteristics as its ability to process three source images in parallel and so define computations among the three. The study is second in his trilogy on cellular image processing algorithms and cellular hardware platforms. Annotation copyrighted by Book News, Inc., Portland, OR.


Handbook of CNN Image Processing

Handbook of CNN Image Processing
Author: Tao Yang
Publisher:
Total Pages: 300
Release: 2002
Genre: Image processing
ISBN: 9780972121200

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Cellular neural networks(CNN) were invented by Chua and Yang in 1988 in the Department of Electrical Engineering and Computer Sciences, University of California at Berkeley. Since then, CNN has become an extremely active field of researches to massive parallel computation, image processing, visual VLSI chips and vision processors. Written by one of the leading figures in the field, this is a lucid and comprehensive reference book for professionals, academic researchers and students. It covers almost all aspects of CNN including: local rules principles, structure and parameter design, continuous-time CNN, discrete-time CNN, fuzzy CNN, delay-type CNN, multi-layer CNN and multi-stage CNN. Also, a systematic classification system of different CNN image operations is presented based on major local rule class. Hundreds of CNN image operations together with their design processes were presented. The difference and equivalence between continuous-time and continuous-time CNN were formally formulated. Many figures are used to illustrate the functions of all CNN image operators. Every aspects of fuzzy CNN including theory, design, applications, learning algorithms and genetic algorithms were also included.


Cellular Neural Networks

Cellular Neural Networks
Author: Angela Slavova
Publisher: Nova Publishers
Total Pages: 218
Release: 2004
Genre: Computers
ISBN: 9781594540400

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This book deals with new theoretical results for studyingCellular Neural Networks (CNNs) concerning its dynamical behavior. Newaspects of CNNs' applications are developed for modelling of somefamous nonlinear partial differential equations arising in biology, genetics, neurophysiology, physics, ecology, etc. The analysis ofCNNs' models is based on the harmonic balance method well known incontrol theory and in the study of electronic oscillators. Suchphenomena as hysteresis, bifurcation and chaos are studied for CNNs.The topics investigated in the book involve several scientificdisciplines, such as dynamical systems, applied mathematics, mathematical modelling, information processing, biology andneurophysiology. The reader will find comprehensive discussion on thesubject as well as rigorous mathematical analyses of networks ofneurons from the view point of dynamical systems. The text is writtenas a textbook for senior undergraduate and graduate students inapplied mathematics. Providing a summary of recent results on dynamicsand modelling of CNNs, the book will also be of interest to allresearchers in the area.


Cellular Image Processing

Cellular Image Processing
Author: Tao Yang
Publisher:
Total Pages: 308
Release: 2001
Genre: Arthritis
ISBN:

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Cellular operations will play a critical role in designing and programming nano-scale computers. In this book a cellular operation is defined as an operation which uses information within a neighbourhood to perform either local or global computational tasks. Cellular operations can be used to solve complex and computation-intensive problems such as parallel learning. Cellular operations can also be used to simulate and explain different kinds of physical phenomena such as small-world phenomena. Since many cellular computational platforms, such as cellular automata and cellular neural networks are proven to be as universal as the Turing machine, cellular operations can be used to solve any computable problems in Turing sense. Therefore, a cellular computer based on cellular operations can serve as an all-purpose computer. The cellular image operators presented in this book can help the design of image processing tasks for different hardware platforms based on either CPU or cellular processors. This book also provides a powerful toolbox for designing cellular hardware platforms such as nano-scale array processors and VLSI array processors. automata and fuzzy cellular automata can be used to solve engineering problems. On the other hand, this book can help electrical engineers to design software for cellular computers based on either micro-electronics or nano-electronics. This book can also serve as a handbook of parallel image processing for experts from the image processing community.


Cellular Neural Networks and Visual Computing

Cellular Neural Networks and Visual Computing
Author: Leon O. Chua
Publisher: Cambridge University Press
Total Pages: 412
Release: 2005-08-22
Genre: Computers
ISBN: 9780521018630

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Cellular Nonlinear/Neural Network (CNN) technology is both a revolutionary concept and an experimentally proven new computing paradigm. Analogic cellular computers based on CNNs are set to change the way analog signals are processed. This unique undergraduate level textbook includes many examples and exercises, including CNN simulator and development software accessible via the Internet. It is an ideal introduction to CNNs and analogic cellular computing for students, researchers and engineers from a wide range of disciplines. Leon Chua, co-inventor of the CNN, and Tamàs Roska are both highly respected pioneers in the field.


Cellular Neural Networks

Cellular Neural Networks
Author: Gabriele Manganaro
Publisher: Springer Science & Business Media
Total Pages: 280
Release: 2012-12-06
Genre: Computers
ISBN: 3642600441

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The field of cellular neural networks (CNNs) is of growing importance in non linear circuits and systems and it is maturing to the point of becoming a new area of study in general nonlinear theory. CNNs emerged through two semi nal papers co-authored by Professor Leon O. Chua back in 1988. Since then, the attention that CNNs have attracted in the scientific community has been vast. For instance, there are international workshops dedicated to CNNs and their applications, special issues published in both the International Journal of Circuit Theory and in the IEEE Transactions on Circuits and Systems, and there are also Associate Editors appointed in the latter journal especially for the CNN field. All of this bears witness the importance that CNNs are gaining within the scientific community. Without doubt this book is a primer in the field. Its extensive coverage provides the reader with a very comprehensive view of aspects involved in the theory and applications of cellular neural networks. The authors have done an excellent job merging basic CNN theory, synchronization, spatio temporal phenomena and hardware implementation into eight exquisitely written chapters. Each chapter is thoroughly illustrated with examples and case studies. The result is a book that is not only excellent as a professional reference but also very appealing as a textbook. My view is that students as well professional engineers will find this volume extremely useful.


Cellular Neural Networks

Cellular Neural Networks
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