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This book presents a collection of the most recent hybrid methods
for image processing. The algorithms included consider
evolutionary, swarm, machine learning and deep learning. The
respective chapters explore different areas of image processing,
from image segmentation to the recognition of objects using complex
approaches and medical applications. The book also discusses the
theory of the methodologies used to provide an overview of the
applications of these tools in image processing. The book is
primarily intended for undergraduate and postgraduate students of
science, engineering and computational mathematics, and can also be
used for courses on artificial intelligence, advanced image
processing, and computational intelligence. Further, it is a
valuable resource for researchers from the evolutionary
computation, artificial intelligence and image processing
communities.
This book presents a compilation of the most recent implementation
of artificial intelligence methods for solving different problems
generated by the COVID-19. The problems addressed came from
different fields and not only from medicine. The information
contained in the book explores different areas of machine and deep
learning, advanced image processing, computational intelligence,
IoT, robotics and automation, optimization, mathematical modeling,
neural networks, information technology, big data, data processing,
data mining, and likewise. Moreover, the chapters include the
theory and methodologies used to provide an overview of applying
these tools to the useful contribution to help to face the emerging
disaster. The book is primarily intended for researchers, decision
makers, practitioners, and readers interested in these subject
matters. The book is useful also as rich case studies and project
proposals for postgraduate courses in those specializations.
This book presents a study of the use of optimization algorithms in
complex image processing problems. The problems selected explore
areas ranging from the theory of image segmentation to the
detection of complex objects in medical images. Furthermore, the
concepts of machine learning and optimization are analyzed to
provide an overview of the application of these tools in image
processing. The material has been compiled from a teaching
perspective. Accordingly, the book is primarily intended for
undergraduate and postgraduate students of Science, Engineering,
and Computational Mathematics, and can be used for courses on
Artificial Intelligence, Advanced Image Processing, Computational
Intelligence, etc. Likewise, the material can be useful for
research from the evolutionary computation, artificial intelligence
and image processing communities.
This book collects different methodologies that permit
metaheuristics and machine learning to solve real-world problems.
This book has exciting chapters that employ evolutionary and swarm
optimization tools combined with machine learning techniques. The
fields of applications are from distribution systems until medical
diagnosis, and they are also included different surveys and
literature reviews that will enrich the reader. Besides,
cutting-edge methods such as neuroevolutionary and IoT
implementations are presented in some chapters. In this sense, the
book provides theory and practical content with novel machine
learning and metaheuristic algorithms. The chapters were compiled
using a scientific perspective. Accordingly, the book is primarily
intended for undergraduate and postgraduate students of Science,
Engineering, and Computational Mathematics and can be used in
courses on Artificial Intelligence, Advanced Machine Learning,
among others. Likewise, the material can be helpful for research
from the evolutionary computation, artificial intelligence
communities.
This book compares the performance of various evolutionary
computation (EC) techniques when they are faced with complex
optimization problems extracted from different engineering domains.
Particularly focusing on recently developed algorithms, it is
designed so that each chapter can be read independently. Several
comparisons among EC techniques have been reported in the
literature, however, they all suffer from one limitation: their
conclusions are based on the performance of popular evolutionary
approaches over a set of synthetic functions with exact solutions
and well-known behaviors, without considering the application
context or including recent developments. In each chapter, a
complex engineering optimization problem is posed, and then a
particular EC technique is presented as the best choice, according
to its search characteristics. Lastly, a set of experiments is
conducted in order to compare its performance to other popular EC
methods.
This book addresses and disseminates state-of-the-art research and
development of differential evolution (DE) and its recent advances,
such as the development of adaptive, self-adaptive and hybrid
techniques. Differential evolution is a population-based
meta-heuristic technique for global optimization capable of
handling non-differentiable, non-linear and multi-modal objective
functions. Many advances have been made recently in differential
evolution, from theory to applications. This book comprises
contributions which include theoretical developments in DE,
performance comparisons of DE, hybrid DE approaches, parallel and
distributed DE for multi-objective optimization, software
implementations, and real-world applications. The book is useful
for researchers, practitioners, and students in disciplines such as
optimization, heuristics, operations research and natural
computing.
This book includes chapters related to the analysis of cultural
differences as a tool to enrich tacit knowledge and make processes
more efficient, the factors that influence job satisfaction and the
value of social capital as a competitive strategy to achieve
productivity and competitiveness of organizations, in addition to
research of the utmost importance to discover the facets of the
diamond with respect to the symbolic capital of the organizations
where Generation Z will work and how it will discover the best time
to establish an innovation ecosystem that will influence its work
trajectory. Industry 4.0 requires a major paradigm shift, since
human capital is a source of competitive advantage. Being
competitive enables to a company, a region, a society or a country
the power to advance in different areas, contributing to the
benefit of a social group, therefore, and organizations need to
make efforts that lead to adding value and generate a competitive
advantage. Industrial applications based on artificial intelligence
can change our lives in just one generation. The chapters in this
book show progress and challenges related to real-world
applications, as well as the need to strengthen human capital to
achieve systemic and comprehensive competitiveness required in the
XXI century.
This book helps the reader to identify how different organizations
in the context of diverse societies deploy their resources and
leverage their capabilities to achieve better performance of its
various labor skills, marketing, social responsibility and
management capacity. Intelligent Logistics is a complex phenomenon
that has become critical for companies to reach their development
locally and internationally. On the one hand, macro-factors and
market structure influence in business competitiveness, but also in
a regional or sector context. The internal aspects and the use of
various business tools contribute to the ability to create value in
an organization. It is of utmost importance to understand the
relevance of crucial aspects in the technological future that
should be known and implemented by the Z generation of its
incidence in the use of organizational models linked to artificial
intelligence. Every innovative aspect in the use of new
technologies for the distribution of goods and services will be
crucial in a globalized world. An avant-garde society will require
improved decision-making regarding Logistics 4.0 and its
implementation in our lives respecting the environment and being
sustainable together with invaluable principles of generating tacit
knowledge for future generations.
The use of metaheuristic algorithms (MA) has been increasing in
recent years, and the image processing field is not the exempted of
their application. In the last two years a big amount of MA has
been introduced as alternatives for solving complex optimization
problems. This book collects the most prominent MA of the 2019 and
2020 and verifies its use in image processing tasks. In addition,
literature review of both MA and digital image processing is
presented as part of the introductory information. Each algorithm
is detailed explained with special focus in the tuning parameters
and the proper implementation for the image processing tasks.
Besides several examples permits to the reader explore and confirm
the use of this kind of intelligent methods. Since image processing
is widely used in different domains, this book considers different
kinds of datasets that includes, magnetic resonance images, thermal
images, agriculture images, among others. The reader then can have
some ideas of implementation that complement the theory exposed of
each optimization mechanism. Regarding the image processing
problems this book consider the segmentation by using different
metrics based on entropies or variances. In the same way, the
identification of different shapes and the detection of objects are
also covered in the corresponding chapters. Each chapter is
complemented with a wide range of experiments and statistical
analysis that permits the reader to judge about the performance of
the MA. Finally, there is included a section that includes some
discussion and conclusions. This section also provides some open
questions and research opportunities for the audience.
This book presents recent contributions and significant
development, advanced issues, and challenges. In real-world
problems and applications, most of the optimization problems
involve different types of constraints. These problems are called
constrained optimization problems (COPs). The optimization of the
constrained optimization problems is considered a challenging task
since the optimum solution(s) must be feasible. In their original
design, evolutionary algorithms (EAs) are able to solve
unconstrained optimization problems effectively. As a result, in
the past decade, many researchers have developed a variety of
constraint handling techniques, incorporated into (EAs) designs, to
counter this deficiency. The main objective for this book is to
make available a self-contained collection of modern research
addressing the general constrained optimization problems in many
real-world applications using nature-inspired optimization
algorithms. This book is suitable for a graduate class on
optimization, but will also be useful for interested senior
students working on their research projects.
The introduction of nature-inspired optimization algorithms
(NIOAs), over the past three decades, helped solve nonlinear,
high-dimensional, and complex computational optimization problems.
NIOAs have been originally developed to overcome the challenges of
global optimization problems such as nonlinearity, non-convexity,
non-continuity, non-differentiability, and/or multimodality which
traditional numerical optimization techniques had difficulties
solving. The main objective for this book is to make available a
self-contained collection of modern research addressing the general
bound-constrained optimization problems in many real-world
applications using nature-inspired optimization algorithms. This
book is suitable for a graduate class on optimization, but will
also be useful for interested senior students working on their
research projects.
This book presents a compilation of the most recent implementation
of artificial intelligence methods for solving different problems
generated by the COVID-19. The problems addressed came from
different fields and not only from medicine. The information
contained in the book explores different areas of machine and deep
learning, advanced image processing, computational intelligence,
IoT, robotics and automation, optimization, mathematical modeling,
neural networks, information technology, big data, data processing,
data mining, and likewise. Moreover, the chapters include the
theory and methodologies used to provide an overview of applying
these tools to the useful contribution to help to face the emerging
disaster. The book is primarily intended for researchers, decision
makers, practitioners, and readers interested in these subject
matters. The book is useful also as rich case studies and project
proposals for postgraduate courses in those specializations.
This book is a collection of the most recent approaches that
combine metaheuristics and machine learning. Some of the methods
considered in this book are evolutionary, swarm, machine learning,
and deep learning. The chapters were classified based on the
content; then, the sections are thematic. Different applications
and implementations are included; in this sense, the book provides
theory and practical content with novel machine learning and
metaheuristic algorithms. The chapters were compiled using a
scientific perspective. Accordingly, the book is primarily intended
for undergraduate and postgraduate students of Science,
Engineering, and Computational Mathematics and is useful in courses
on Artificial Intelligence, Advanced Machine Learning, among
others. Likewise, the book is useful for research from the
evolutionary computation, artificial intelligence, and image
processing communities.
This book presents a study of the most important methods of image
segmentation and how they are extended and improved using
metaheuristic algorithms. The segmentation approaches selected have
been extensively applied to the task of segmentation (especially in
thresholding), and have also been implemented using various
metaheuristics and hybridization techniques leading to a broader
understanding of how image segmentation problems can be solved from
an optimization perspective. The field of image processing is
constantly changing due to the extensive integration of cameras in
devices; for example, smart phones and cars now have embedded
cameras. The images have to be accurately analyzed, and crucial
pre-processing steps, like image segmentation, and artificial
intelligence, including metaheuristics, are applied in the
automatic analysis of digital images. Metaheuristic algorithms have
also been used in various fields of science and technology as the
demand for new methods designed to solve complex optimization
problems increases. This didactic book is primarily intended for
undergraduate and postgraduate students of science, engineering,
and computational mathematics. It is also suitable for courses such
as artificial intelligence, advanced image processing, and
computational intelligence. The material is also useful for
researches in the fields of evolutionary computation, artificial
intelligence, and image processing.
This book presents the proceedings of the 1st International
Conference on Artificial Intelligence and Computer Visions (AICV
2020), which took place in Cairo, Egypt, from April 8 to 10, 2020.
This international conference, which highlighted essential research
and developments in the fields of artificial intelligence and
computer visions, was organized by the Scientific Research Group in
Egypt (SRGE). The book is divided into sections, covering the
following topics: swarm-based optimization mining and data
analysis, deep learning and applications, machine learning and
applications, image processing and computer vision, intelligent
systems and applications, and intelligent networks.
This book compares the performance of various evolutionary
computation (EC) techniques when they are faced with complex
optimization problems extracted from different engineering domains.
Particularly focusing on recently developed algorithms, it is
designed so that each chapter can be read independently. Several
comparisons among EC techniques have been reported in the
literature, however, they all suffer from one limitation: their
conclusions are based on the performance of popular evolutionary
approaches over a set of synthetic functions with exact solutions
and well-known behaviors, without considering the application
context or including recent developments. In each chapter, a
complex engineering optimization problem is posed, and then a
particular EC technique is presented as the best choice, according
to its search characteristics. Lastly, a set of experiments is
conducted in order to compare its performance to other popular EC
methods.
This book presents a study of the use of optimization algorithms in
complex image processing problems. The problems selected explore
areas ranging from the theory of image segmentation to the
detection of complex objects in medical images. Furthermore, the
concepts of machine learning and optimization are analyzed to
provide an overview of the application of these tools in image
processing. The material has been compiled from a teaching
perspective. Accordingly, the book is primarily intended for
undergraduate and postgraduate students of Science, Engineering,
and Computational Mathematics, and can be used for courses on
Artificial Intelligence, Advanced Image Processing, Computational
Intelligence, etc. Likewise, the material can be useful for
research from the evolutionary computation, artificial intelligence
and image processing communities.
This book is a collection of the most recent approaches that
combine metaheuristics and machine learning. Some of the methods
considered in this book are evolutionary, swarm, machine learning,
and deep learning. The chapters were classified based on the
content; then, the sections are thematic. Different applications
and implementations are included; in this sense, the book provides
theory and practical content with novel machine learning and
metaheuristic algorithms. The chapters were compiled using a
scientific perspective. Accordingly, the book is primarily intended
for undergraduate and postgraduate students of Science,
Engineering, and Computational Mathematics and is useful in courses
on Artificial Intelligence, Advanced Machine Learning, among
others. Likewise, the book is useful for research from the
evolutionary computation, artificial intelligence, and image
processing communities.
This book addresses and disseminates state-of-the-art research and
development of differential evolution (DE) and its recent advances,
such as the development of adaptive, self-adaptive and hybrid
techniques. Differential evolution is a population-based
meta-heuristic technique for global optimization capable of
handling non-differentiable, non-linear and multi-modal objective
functions. Many advances have been made recently in differential
evolution, from theory to applications. This book comprises
contributions which include theoretical developments in DE,
performance comparisons of DE, hybrid DE approaches, parallel and
distributed DE for multi-objective optimization, software
implementations, and real-world applications. The book is useful
for researchers, practitioners, and students in disciplines such as
optimization, heuristics, operations research and natural
computing.
This book includes chapters related to the analysis of cultural
differences as a tool to enrich tacit knowledge and make processes
more efficient, the factors that influence job satisfaction and the
value of social capital as a competitive strategy to achieve
productivity and competitiveness of organizations, in addition to
research of the utmost importance to discover the facets of the
diamond with respect to the symbolic capital of the organizations
where Generation Z will work and how it will discover the best time
to establish an innovation ecosystem that will influence its work
trajectory. Industry 4.0 requires a major paradigm shift, since
human capital is a source of competitive advantage. Being
competitive enables to a company, a region, a society or a country
the power to advance in different areas, contributing to the
benefit of a social group, therefore, and organizations need to
make efforts that lead to adding value and generate a competitive
advantage. Industrial applications based on artificial intelligence
can change our lives in just one generation. The chapters in this
book show progress and challenges related to real-world
applications, as well as the need to strengthen human capital to
achieve systemic and comprehensive competitiveness required in the
XXI century.
This book helps the reader to identify how different organizations
in the context of diverse societies deploy their resources and
leverage their capabilities to achieve better performance of its
various labor skills, marketing, social responsibility and
management capacity. Intelligent Logistics is a complex phenomenon
that has become critical for companies to reach their development
locally and internationally. On the one hand, macro-factors and
market structure influence in business competitiveness, but also in
a regional or sector context. The internal aspects and the use of
various business tools contribute to the ability to create value in
an organization. It is of utmost importance to understand the
relevance of crucial aspects in the technological future that
should be known and implemented by the Z generation of its
incidence in the use of organizational models linked to artificial
intelligence. Every innovative aspect in the use of new
technologies for the distribution of goods and services will be
crucial in a globalized world. An avant-garde society will require
improved decision-making regarding Logistics 4.0 and its
implementation in our lives respecting the environment and being
sustainable together with invaluable principles of generating tacit
knowledge for future generations.
This book presents a study of the most important methods of image
segmentation and how they are extended and improved using
metaheuristic algorithms. The segmentation approaches selected have
been extensively applied to the task of segmentation (especially in
thresholding), and have also been implemented using various
metaheuristics and hybridization techniques leading to a broader
understanding of how image segmentation problems can be solved from
an optimization perspective. The field of image processing is
constantly changing due to the extensive integration of cameras in
devices; for example, smart phones and cars now have embedded
cameras. The images have to be accurately analyzed, and crucial
pre-processing steps, like image segmentation, and artificial
intelligence, including metaheuristics, are applied in the
automatic analysis of digital images. Metaheuristic algorithms have
also been used in various fields of science and technology as the
demand for new methods designed to solve complex optimization
problems increases. This didactic book is primarily intended for
undergraduate and postgraduate students of science, engineering,
and computational mathematics. It is also suitable for courses such
as artificial intelligence, advanced image processing, and
computational intelligence. The material is also useful for
researches in the fields of evolutionary computation, artificial
intelligence, and image processing.
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