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The book provides a comprehensive exposition of all major topics in
digital signal processing (DSP). With numerous illustrative
examples for easy understanding of the topics, it also includes
MATLAB-based examples with codes in order to encourage the readers
to become more confident of the fundamentals and to gain insights
into DSP. Further, it presents real-world signal processing design
problems using MATLAB and programmable DSP processors. In addition
to problems that require analytical solutions, it discusses
problems that require solutions using MATLAB at the end of each
chapter. Divided into 13 chapters, it addresses many emerging
topics, which are not typically found in advanced texts on DSP. It
includes a chapter on adaptive digital filters used in the signal
processing problems for faster acceptable results in the presence
of changing environments and changing system requirements.
Moreover, it offers an overview of wavelets, enabling readers to
easily understand the basics and applications of this powerful
mathematical tool for signal and image processing. The final
chapter explores DSP processors, which is an area of growing
interest for researchers. A valuable resource for undergraduate and
graduate students, it can also be used for self-study by
researchers, practicing engineers and scientists in electronics,
communications, and computer engineering as well as for teaching
one- to two-semester courses.
This book provides a broad yet detailed introduction to neural
networks and machine learning in a statistical framework. A single,
comprehensive resource for study and further research, it explores
the major popular neural network models and statistical learning
approaches with examples and exercises and allows readers to gain a
practical working understanding of the content. This updated new
edition presents recently published results and includes six new
chapters that correspond to the recent advances in computational
learning theory, sparse coding, deep learning, big data and cloud
computing. Each chapter features state-of-the-art descriptions and
significant research findings. The topics covered include: *
multilayer perceptron; * the Hopfield network; * associative memory
models;* clustering models and algorithms; * t he radial basis
function network; * recurrent neural networks; * nonnegative matrix
factorization; * independent component analysis; *probabilistic and
Bayesian networks; and * fuzzy sets and logic. Focusing on the
prominent accomplishments and their practical aspects, this book
provides academic and technical staff, as well as graduate students
and researchers with a solid foundation and comprehensive reference
on the fields of neural networks, pattern recognition, signal
processing, and machine learning.
This concise but comprehensive textbook reviews the most popular
neural-network methods and their associated techniques. Each
chapter provides state-of-the-art descriptions of important major
research results of the respective neural-network methods. A range
of relevant computational intelligence topics, such as fuzzy logic
and evolutionary algorithms - powerful tools for neural-network
learning - are introduced. The systematic survey of neural-network
models and exhaustive references list will point readers toward
topics for future research. The algorithms outlined also make this
textbook a valuable reference for scientists and practitioners
working in pattern recognition, signal processing, speech and image
processing, data analysis and artificial intelligence.
The book provides a comprehensive exposition of all major topics in
digital signal processing (DSP). With numerous illustrative
examples for easy understanding of the topics, it also includes
MATLAB-based examples with codes in order to encourage the readers
to become more confident of the fundamentals and to gain insights
into DSP. Further, it presents real-world signal processing design
problems using MATLAB and programmable DSP processors. In addition
to problems that require analytical solutions, it discusses
problems that require solutions using MATLAB at the end of each
chapter. Divided into 13 chapters, it addresses many emerging
topics, which are not typically found in advanced texts on DSP. It
includes a chapter on adaptive digital filters used in the signal
processing problems for faster acceptable results in the presence
of changing environments and changing system requirements.
Moreover, it offers an overview of wavelets, enabling readers to
easily understand the basics and applications of this powerful
mathematical tool for signal and image processing. The final
chapter explores DSP processors, which is an area of growing
interest for researchers. A valuable resource for undergraduate and
graduate students, it can also be used for self-study by
researchers, practicing engineers and scientists in electronics,
communications, and computer engineering as well as for teaching
one- to two-semester courses.
This textbook provides a comprehensive introduction to
nature-inspired metaheuristic methods for search and optimization,
including the latest trends in evolutionary algorithms and other
forms of natural computing. Over 100 different types of these
methods are discussed in detail. The authors emphasize non-standard
optimization problems and utilize a natural approach to the topic,
moving from basic notions to more complex ones. An introductory
chapter covers the necessary biological and mathematical
backgrounds for understanding the main material. Subsequent
chapters then explore almost all of the major metaheuristics for
search and optimization created based on natural phenomena,
including simulated annealing, recurrent neural networks, genetic
algorithms and genetic programming, differential evolution, memetic
algorithms, particle swarm optimization, artificial immune systems,
ant colony optimization, tabu search and scatter search, bee and
bacteria foraging algorithms, harmony search, biomolecular
computing, quantum computing, and many others. General topics on
dynamic, multimodal, constrained, and multiobjective optimizations
are also described. Each chapter includes detailed flowcharts that
illustrate specific algorithms and exercises that reinforce
important topics. Introduced in the appendix are some benchmarks
for the evaluation of metaheuristics. Search and Optimization by
Metaheuristics is intended primarily as a textbook for graduate and
advanced undergraduate students specializing in engineering and
computer science. It will also serve as a valuable resource for
scientists and researchers working in these areas, as well as those
who are interested in search and optimization methods.
Providing a broad but in-depth introduction to neural network and
machine learning in a statistical framework, this book provides a
single, comprehensive resource for study and further research. All
the major popular neural network models and statistical learning
approaches are covered with examples and exercises in every chapter
to develop a practical working understanding of the content. Each
of the twenty-five chapters includes state-of-the-art descriptions
and important research results on the respective topics. The broad
coverage includes the multilayer perceptron, the Hopfield network,
associative memory models, clustering models and algorithms, the
radial basis function network, recurrent neural networks, principal
component analysis, nonnegative matrix factorization, independent
component analysis, discriminant analysis, support vector machines,
kernel methods, reinforcement learning, probabilistic and Bayesian
networks, data fusion and ensemble learning, fuzzy sets and logic,
neurofuzzy models, hardware implementations, and some machine
learning topics. Applications to biometric/bioinformatics and data
mining are also included. Focusing on the prominent accomplishments
and their practical aspects, academic and technical staff, graduate
students and researchers will find that this provides a solid
foundation and encompassing reference for the fields of neural
networks, pattern recognition, signal processing, machine learning,
computational intelligence, and data mining.
This concise but comprehensive textbook reviews the most popular
neural-network methods and their associated techniques. Each
chapter provides state-of-the-art descriptions of important major
research results of the respective neural-network methods. A range
of relevant computational intelligence topics, such as fuzzy logic
and evolutionary algorithms - powerful tools for neural-network
learning - are introduced. The systematic survey of neural-network
models and exhaustive references list will point readers toward
topics for future research. The algorithms outlined also make this
textbook a valuable reference for scientists and practitioners
working in pattern recognition, signal processing, speech and image
processing, data analysis and artificial intelligence.
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Advances in Multimedia Information Processing - PCM 2008 - 9th Pacific Rim Conference on Multimedia, Tainan, Taiwan, December 9-13, 2008, Proceedings (Paperback, 2008 ed.)
Yueh-Min Ray Huang, Changsheng Xu, Kuo-Sheng Cheng, Jar-Ferr Kevin Yang, M.N.S. Swamy, …
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R3,129
Discovery Miles 31 290
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Ships in 10 - 15 working days
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Welcome to the proceedings of 9th Pacific-Rim Conference on
Multimedia (PCM 2008) held at the National Cheng Kung University,
Tainan, Taiwan during Dec- ber 9-13, 2008. The first PCM was held
in Sydney in 2000. Since then, it has been held successfully around
the Pacific Rim, including Beijing in 2001, Hsinchu in 2002,
Singapore in 2003, Tokyo in 2004, Jeju in 2005, Zhejiang in 2006,
Hong Kong in 2007 and finally Tainan. PCM is a major annual
international conference bringing together researchers, developers,
and educators in the field of multimedia from around the world. It
covers a wide spectrum of multimedia research, from
state-of-the-art theoretical breakthroughs to the practical systems
of multimedia analysis and processing. PCM 2008 featured a
comprehensive program including tutorials, keynote talks, regular
oral presentations, special sessions, and poster sessions. This
year, we - cepted 79 papers out of 210 submissions, giving an
acceptance rate of 37%. In addition, 39 papers were accepted for
poster presentation. The submissions were categorized into five
different tracks: multimedia compression, communication and
networking, multimedia processing, analysis and retrieval,
multimedia databases, systems, and applications, multimedia
human-computer interfaces, multimedia security and digital right
management, with a total of 210 submissions from 18 countries and
regions. Among the five tracks, "multimedia analysis and retrieval"
received the most submissions (34% of the submissions). We kindly
appreciate the great effort made by the Program Committee members
and the additional reviewers in the reviewing of submissions.
This book provides a broad yet detailed introduction to neural
networks and machine learning in a statistical framework. A single,
comprehensive resource for study and further research, it explores
the major popular neural network models and statistical learning
approaches with examples and exercises and allows readers to gain a
practical working understanding of the content. This updated new
edition presents recently published results and includes six new
chapters that correspond to the recent advances in computational
learning theory, sparse coding, deep learning, big data and cloud
computing. Each chapter features state-of-the-art descriptions and
significant research findings. The topics covered include: *
multilayer perceptron; * the Hopfield network; * associative memory
models;* clustering models and algorithms; * t he radial basis
function network; * recurrent neural networks; * nonnegative matrix
factorization; * independent component analysis; *probabilistic and
Bayesian networks; and * fuzzy sets and logic. Focusing on the
prominent accomplishments and their practical aspects, this book
provides academic and technical staff, as well as graduate students
and researchers with a solid foundation and comprehensive reference
on the fields of neural networks, pattern recognition, signal
processing, and machine learning.
This practically-oriented, all-inclusive guide covers all the major
enabling techniques for current and next-generation cellular
communications and wireless networking systems. Technologies
covered include CDMA, OFDM, UWB, turbo and LDPC coding, smart
antennas, wireless ad hoc and sensor networks, MIMO, and cognitive
radios, providing readers with everything they need to master
wireless systems design in a single volume. Uniquely, a detailed
introduction to the properties, design, and selection of RF
subsystems and antennas is provided, giving readers a clear
overview of the whole wireless system. It is also the first
textbook to include a complete introduction to speech coders and
video coders used in wireless systems. Richly illustrated with over
400 figures, and with a unique emphasis on practical and
state-of-the-art techniques in system design, rather than on the
mathematical foundations, this book is ideal for graduate students
and researchers in wireless communications, as well as for wireless
and telecom engineers.
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