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In the early 1990s, the establishment of the Internet brought forth
a revolutionary viewpoint of information storage, distribution, and
processing: the World Wide Web is becoming an enormous and
expanding distributed digital library. Along with the development
of the Web, image indexing and retrieval have grown into research
areas sharing a vision of intelligent agents. Far beyond Web
searching, image indexing and retrieval can potentially be applied
to many other areas, including biomedicine, space science,
biometric identification, digital libraries, the military,
education, commerce, culture and entertainment.
Machine Learning and Statistical Modeling Approaches to Image
Retrieval describes several approaches of integrating machine
learning and statistical modeling into an image retrieval and
indexing system that demonstrates promising results. The topics of
this book reflect authors' experiences of machine learning and
statistical modeling based image indexing and retrieval. This book
contains detailed references for further reading and research in
this field as well.
With the recent developments in the field of advanced materials,
there exists a need for a systematic summary and detailed
introduction of the modeling and simulation methods for these
materials. This book provides a comprehensive description of
mechanical behavior of advanced materials using modeling and
simulation. It includes materials such as high entropy alloys, high
entropy amorphous alloys, nickel-based superalloys, light alloys,
electrode materials, and nanostructured reinforced composites. •
Reviews the performance and application of a variety of advanced
materials and provides the detailed theoretical modeling and
simulation of mechanical properties. • Covers the topics of
deformation, fracture, diffusion, and fatigue. • Features worked
examples and exercises that help readers test their understanding.
This book is aimed at researchers and advanced students in solid
mechanics, material science, engineering, material chemistry, and
those studying mechanics of materials.
This book addresses the current development status of high-speed
railways globally and analyzes their operational schemes and
practices under emergent conditions. It covers methods and
problem-solving philosophy with regard to complexity analysis,
capacity evaluation, passenger-flow forecasts, operating
strategies, passenger-flow allocation, resource allocation and
supporting technologies in the context of serious accidents and
adverse environmental influences on train operation and service
organization of high-speed railways. The abnormal scenarios,
emergent conditions, adverse events and corresponding theoretical
and applicational solutions dealing with the train operation both
in line and network scale are all from real-world cases related to
and designed for Chinese high-speed railway network which is the
largest in scale, the highest in complexity and the most difficult
in tackling with the complex and diverse climate and geographical
environment , and thus makes the book both theoretically rigorous
and practically applicable. It not only helps readers consider the
train and network interactions from the perspective of complexity
science, but also provides them with a philosophical framework and
approaches available to construct their own roadmap and
problem-solving paradigms in their daily research or management.
This book is suitable for researchers, postgraduates and managerial
and engineering practitioners in railway-related fields, especially
in high-speed railway operation and emergency management.
The multiple signal demixing and parameter estimation problems that
result from the impacts of background noise and interference are
issues that are frequently encountered in the fields of radar,
sonar, communications, and navigation. Research in the signal
processing and control fields has always focused on improving the
estimation performance of parameter estimation methods at low SNR
and maintaining the robustness of estimations in the presence of
model errors. This book presents a universal and robust relaxation
estimation method (RELAX), and introduces its basic principles and
applications in the fields of classical line spectrum estimation,
time of delay estimation, DOA estimation, and radar target imaging.
This information is explained comprehensively and in great detail,
and uses metaphors pertaining to romantic relationships to
visualize the basic problems of parameter estimation, the basic
principles of the five types of classical parameter estimation
methods, and the relationships between these principles. The book
serves as a reference for scientists and technologists in the
fields of signal processing and control, while also providing
relevant information for graduate students in the related fields.
In the current age of information technology, the issues of
distributing and utilizing images efficiently and effectively are
of substantial concern. Solutions to many of the problems arising
from these issues are provided by techniques of image processing,
among which segmentation and compression are topics of this book.
Image segmentation is a process for dividing an image into its
constituent parts. For block-based segmentation using statistical
classification, an image is divided into blocks and a feature
vector is formed for each block by grouping statistics of its pixel
intensities. Conventional block-based segmentation algorithms
classify each block separately, assuming independence of feature
vectors. Image Segmentation and Compression Using Hidden Markov
Models presents a new algorithm that models the statistical
dependence among image blocks by two dimensional hidden Markov
models (HMMs). Formulas for estimating the model according to the
maximum likelihood criterion are derived from the EM algorithm. To
segment an image, optimal classes are searched jointly for all the
blocks by the maximum a posteriori (MAP) rule. The 2-D HMM is
extended to multiresolution so that more context information is
exploited in classification and fast progressive segmentation
schemes can be formed naturally. The second issue addressed in the
book is the design of joint compression and classification systems
using the 2-D HMM and vector quantization. A classifier designed
with the side goal of good compression often outperforms one aimed
solely at classification because overfitting to training data is
suppressed by vector quantization. Image Segmentation and
Compression Using Hidden Markov Models is an essential reference
source for researchers and engineers working in statistical signal
processing or image processing, especially those who are interested
in hidden Markov models. It is also of value to those working on
statistical modeling.
This timely book covers the basic concepts of the dynamics of
epidemic disease, presenting various kinds of models as well as
typical research methods and results. It introduces the latest
results in the current literature, especially those obtained by
highly rated Chinese scholars. A lot of attention is paid to the
qualitative analysis of models, the sheer variety of models, and
the frontiers of mathematical epidemiology. The process and key
steps in epidemiological modeling and prediction are highlighted,
using transmission models of HIV/AIDS, SARS, and tuberculosis as
application examples.
This book covers fundamental principles and computational
approaches relevant to visual saliency computation. As an
interdisciplinary problem, visual saliency computation is
introduced in this book from an innovative perspective that
combines both neurobiology and machine learning. The book is also
well-structured to address a wide range of readers, from
specialists in the field to general readers interested in computer
science and cognitive psychology. With this book, a reader can
start from the very basic question of "what is visual saliency?"
and progressively explore the problems in detecting salient
locations, extracting salient objects, learning prior knowledge,
evaluating performance, and using saliency in real-world
applications. It is highly expected that this book will spark a
great interest of research in the related communities in years to
come.
In the early 1990s, the establishment of the Internet brought forth
a revolutionary viewpoint of information storage, distribution, and
processing: the World Wide Web is becoming an enormous and
expanding distributed digital library. Along with the development
of the Web, image indexing and retrieval have grown into research
areas sharing a vision of intelligent agents. Far beyond Web
searching, image indexing and retrieval can potentially be applied
to many other areas, including biomedicine, space science,
biometric identification, digital libraries, the military,
education, commerce, culture and entertainment. Machine Learning
and Statistical Modeling Approaches to Image Retrieval describes
several approaches of integrating machine learning and statistical
modeling into an image retrieval and indexing system that
demonstrates promising results. The topics of this book reflect
authors' experiences of machine learning and statistical modeling
based image indexing and retrieval. This book contains detailed
references for further reading and research in this field as well.
In the current age of information technology, the issues of
distributing and utilizing images efficiently and effectively are
of substantial concern. Solutions to many of the problems arising
from these issues are provided by techniques of image processing,
among which segmentation and compression are topics of this book.
Image segmentation is a process for dividing an image into its
constituent parts. For block-based segmentation using statistical
classification, an image is divided into blocks and a feature
vector is formed for each block by grouping statistics of its pixel
intensities. Conventional block-based segmentation algorithms
classify each block separately, assuming independence of feature
vectors. Image Segmentation and Compression Using Hidden Markov
Models presents a new algorithm that models the statistical
dependence among image blocks by two dimensional hidden Markov
models (HMMs). Formulas for estimating the model according to the
maximum likelihood criterion are derived from the EM algorithm. To
segment an image, optimal classes are searched jointly for all the
blocks by the maximum a posteriori (MAP) rule. The 2-D HMM is
extended to multiresolution so that more context information is
exploited in classification and fast progressive segmentation
schemes can be formed naturally. The second issue addressed in the
book is the design of joint compression and classification systems
using the 2-D HMM and vector quantization. A classifier designed
with the side goal of good compression often outperforms one aimed
solely at classification because overfitting to training data is
suppressed by vector quantization. Image Segmentation and
Compression Using Hidden Markov Models is an essential reference
source for researchers and engineers working in statistical signal
processing or image processing, especially those who are interested
in hidden Markov models. It is also of value to those working on
statistical modeling.
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Cyber Security - 15th International Annual Conference, CNCERT 2018, Beijing, China, August 14-16, 2018, Revised Selected Papers (Paperback, 1st ed. 2019)
Xiaochun Yun, Weiping Wen, Bo Lang, Hanbing Yan, Li Ding, …
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R1,666
Discovery Miles 16 660
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Ships in 10 - 15 working days
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This open access book constitutes the refereed proceedings of the
15th International Annual Conference on Cyber Security, CNCERT
2018, held in Beijing, China, in August 2018. The 14 full papers
presented were carefully reviewed and selected from 53 submissions.
The papers cover the following topics: emergency response, mobile
internet security, IoT security, cloud security, threat
intelligence analysis, vulnerability, artificial intelligence
security, IPv6 risk research, cybersecurity policy and regulation
research, big data analysis and industrial security.
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