|
Showing 1 - 25 of
36 matches in All Departments
Today's customer-oriented operational philosophy has forced
organizations to face the challenge of transforming into digital
businesses to meet growing customer demand. The reality is that
power is shifting from institutions to customers, so it's up to
providers to master both customer experience and digital
operational excellence. However, despite this turn toward
digitalization, many businesses struggle to manage their technology
base strategically. Disruptive Innovation and Emerging Technologies
for Business Excellence in the Service Sector provides an in-depth
exploration of options that can assist organizations in developing
a consistent and coherent view of various drivers in order to shape
their markets and operations as well as how disruptive innovations
and emerging technologies can contribute to businesses now and in
the future. Covering a wide range of topics such as sustainable
transportation and customer service experiences, it is ideal for
industry professionals, researchers, academicians, instructors,
decision makers, and students.
In educational institutions, outcome-based education (OBE) remains
crucial in measuring how certain teaching techniques are impacting
the students' ability to learn. Currently, these changes in
students are mapped by analyzing the objectives and outcomes of
certain learning processes. International accreditation agencies
and quality assessment networks are all focusing on mapping between
outcomes and objectives. The need of assessment tools arises that
can provide a genuine mapping in the global context so that
students or learners can achieve expected objectives. Assessment
Tools for Mapping Learning Outcomes With Learning Objectives is a
pivotal reference source that provides vital research on the
implementation of quality assessment methods for measuring the
outcomes of select learning processes on students. While
highlighting topics such as quality assessment, effective
employability, and student learning objectives, this book is
ideally designed for students, administrators, policymakers,
researchers, academicians, practitioners, managers, executives,
strategists, and educators seeking current research on the
application of modern mapping tools for assessing student learning
outcomes in higher education.
Multinational organizations have begun to realize that sentiment
mining plays an important role for decision making and market
strategy. The revolutionary growth of digital marketing not only
changes the market game, but also brings forth new opportunities
for skilled professionals and expertise. Currently, the
technologies are rapidly changing, and artificial intelligence (AI)
and machine learning are contributing as game-changing
technologies. These are not only trending but are also increasingly
popular among data scientists and data analysts. New Opportunities
for Sentiment Analysis and Information Processing provides
interdisciplinary research in information retrieval and sentiment
analysis including studies on extracting sentiments from textual
data, sentiment visualization-based dimensionality reduction for
multiple features, and deep learning-based multi-domain sentiment
extraction. The book also optimizes techniques used for sentiment
identification and examines applications of sentiment analysis and
emotion detection. Covering such topics as communication networks,
natural language processing, and semantic analysis, this book is
essential for data scientists, data analysts, IT specialists,
scientists, researchers, academicians, and students.
This book provides a comprehensive overview of the theory and
praxis of Big Data Analytics and how these are used to extract
cognition-related information from social media and literary texts.
It presents analytics that transcends the borders of
discipline-specific academic research and focuses on knowledge
extraction, prediction, and decision-making in the context of
individual, social, and national development. The content is
divided into three main sections: the first of which discusses
various approaches associated with Big Data Analytics, while the
second addresses the security and privacy of big data in social
media, and the last focuses on the literary text as the literary
data in Big Data Analytics. Sharing valuable insights into the
etiology behind human cognition and its reflection in social media
and literary texts, the book benefits all those interested in
analytics that can be applied to literature, history, philosophy,
linguistics, literary theory, media & communication studies and
computational/digital humanities.
The Covid-19 pandemic has been a learning experience for all in one
way or other, especially for those who are engaged in
teaching-learning through online and blended learning techniques
and tools. This learning experience adds value and a new dimension
to the practices and methods already adopted towards achieving
sustainable development goal (SDG) 4 of the 17 sustainable
development goals formulated by UNESCO. SDG 4 is designed for
higher education and highlights the overview, importance, and ways
of achieving sustainable goals in higher education. This book
discusses and enumerates best practices in the assessment of
student learning outcomes, the mapping of student learning outcomes
with learning objectives, and the development of employability
skills in young minds in order to achieve SDG 4 for universities
globally. The book is ideal for students, researchers,
practitioners, policymakers, and other stakeholders who are
involved in higher education.
This book examines the use of biomedical signal processing—EEG,
EMG, and ECG—in analyzing and diagnosing various medical
conditions, particularly diseases related to the heart and brain.
In combination with machine learning tools and other optimization
methods, the analysis of biomedical signals greatly benefits the
healthcare sector by improving patient outcomes through early,
reliable detection. The discussion of these modalities promotes
better understanding, analysis, and application of biomedical
signal processing for specific diseases. The major highlights of
Biomedical Signal Processing for Healthcare Applications include
biomedical signals, acquisition of signals, pre-processing and
analysis, post-processing and classification of the signals, and
application of analysis and classification for the diagnosis of
brain- and heart-related diseases. Emphasis is given to brain and
heart signals because incomplete interpretations are made by
physicians of these aspects in several situations, and these
partial interpretations lead to major complications. FEATURES
Examines modeling and acquisition of biomedical signals of
different disorders Discusses CAD-based analysis of diagnosis
useful for healthcare Includes all important modalities of
biomedical signals, such as EEG, EMG, MEG, ECG, and PCG Includes
case studies and research directions, including novel approaches
used in advanced healthcare systems This book can be used by a wide
range of users, including students, research scholars, faculty, and
practitioners in the field of biomedical engineering and medical
image analysis and diagnosis.
Brain and Behavior Computing offers insights into the functions of
the human brain. This book provides an emphasis on brain and
behavior computing with different modalities available such as
signal processing, image processing, data sciences, statistics
further it includes fundamental, mathematical model, algorithms,
case studies, and future research scopes. It further illustrates
brain signal sources and how the brain signal can process,
manipulate, and transform in different domains allowing researchers
and professionals to extract information about the physiological
condition of the brain. Emphasizes real challenges in brain signal
processing for a variety of applications for analysis,
classification, and clustering. Discusses data sciences and its
applications in brain computing visualization. Covers all the most
recent tools for analysing the brain and it’s working. Describes
brain modeling and all possible machine learning methods and their
uses. Augments the use of data mining and machine learning to brain
computer interface (BCI) devices. Includes case studies and actual
simulation examples. This book is aimed at researchers,
professionals, and graduate students in image processing and
computer vision, biomedical engineering, signal processing, and
brain and behavior computing.
Brain and Behavior Computing offers insights into the functions of
the human brain. This book provides an emphasis on brain and
behavior computing with different modalities available such as
signal processing, image processing, data sciences, statistics
further it includes fundamental, mathematical model, algorithms,
case studies, and future research scopes. It further illustrates
brain signal sources and how the brain signal can process,
manipulate, and transform in different domains allowing researchers
and professionals to extract information about the physiological
condition of the brain. Emphasizes real challenges in brain signal
processing for a variety of applications for analysis,
classification, and clustering. Discusses data sciences and its
applications in brain computing visualization. Covers all the most
recent tools for analysing the brain and it's working. Describes
brain modeling and all possible machine learning methods and their
uses. Augments the use of data mining and machine learning to brain
computer interface (BCI) devices. Includes case studies and actual
simulation examples. This book is aimed at researchers,
professionals, and graduate students in image processing and
computer vision, biomedical engineering, signal processing, and
brain and behavior computing.
Artificial intelligence (AI) and machine learning (ML) techniques
play an important role in our daily lives by enhancing predictions
and decision-making for the public in several fields such as
financial services, real estate business, consumer goods, social
media, etc. Despite several studies that have proved the efficacy
of AI/ML tools in providing improved healthcare solutions, it has
not gained the trust of health-care practitioners and medical
scientists. This is due to poor reporting of the technology,
variability in medical data, small datasets, and lack of standard
guidelines for application of AI. Therefore, the development of new
AI/ML tools for various domains of medicine is an ongoing field of
research. Machine Learning in Healthcare: Fundamentals and Recent
Applications discusses how to build various ML algorithms and how
they can be applied to improve healthcare systems. Healthcare
applications of AI are innumerable: medical data analysis, early
detection and diagnosis of disease, providing objective-based
evidence to reduce human errors, curtailing inter- and
intra-observer errors, risk identification and interventions for
healthcare management, real-time health monitoring, assisting
clinicians and patients for selecting appropriate medications, and
evaluating drug responses. Extensive demonstrations and discussion
on the various principles of machine learning and its application
in healthcare is provided, along with solved examples and
exercises. This text is ideal for readers interested in machine
learning without any background knowledge and looking to implement
machine-learning models for healthcare systems.
Provides the details of state-of-the-art machine learning methods
used in VLSI Design. Discusses hardware implementation and device
modeling pertaining to machine learning algorithms. Explores
machine learning for various VLSI architectures and reconfigurable
computing. Illustrate latest techniques for device size and feature
optimization. Highlight latest case studies and reviews of the
methods used for hardware implementation.
The term "data" being mostly used, experimented, analyzed, and
researched, "Data Science and its Applications" finds relevance in
all domains of research studies including science, engineering,
technology, management, mathematics, and many more in wide range of
applications such as sentiment analysis, social medial analytics,
signal processing, gene analysis, market analysis, healthcare,
bioinformatics etc. The book on Data Science and its applications
discusses about data science overview, scientific methods, data
processing, extraction of meaningful information from data, and
insight for developing the concept from different domains,
highlighting mathematical and statistical models, operations
research, computer programming, machine learning, data
visualization, pattern recognition and others. The book also
highlights data science implementation and evaluation of
performance in several emerging applications such as information
retrieval, cognitive science, healthcare, and computer vision. The
data analysis covers the role of data science depicting different
types of data such as text, image, biomedical signal etc. useful
for a wide range of real time applications. The salient features of
the book are: Overview, Challenges and Opportunities in Data
Science and Real Time Applications Addressing Big Data Issues
Useful Machine Learning Methods Disease Detection and Healthcare
Applications utilizing Data Science Concepts and Deep Learning
Applications in Stock Market, Education, Behavior Analysis, Image
Captioning, Gene Analysis and Scene Text Analysis Data Optimization
Due to multidisciplinary applications of data science concepts, the
book is intended for wide range of readers that include Data
Scientists, Big Data Analysists, Research Scholars engaged in Data
Science and Machine Learning applications.
Covers different modalities for improvement of healthcare system
Describes implementation strategies and their applications in
diagnosis of modalities Reviews automatic identification of related
disorders using medical modality Discusses bio-potential signals
and their appropriate analysis for studying different disorders
Includes case studies, real-time examples and research directions
This book examines the use of biomedical signal processing-EEG,
EMG, and ECG-in analyzing and diagnosing various medical
conditions, particularly diseases related to the heart and brain.
In combination with machine learning tools and other optimization
methods, the analysis of biomedical signals greatly benefits the
healthcare sector by improving patient outcomes through early,
reliable detection. The discussion of these modalities promotes
better understanding, analysis, and application of biomedical
signal processing for specific diseases. The major highlights of
Biomedical Signal Processing for Healthcare Applications include
biomedical signals, acquisition of signals, pre-processing and
analysis, post-processing and classification of the signals, and
application of analysis and classification for the diagnosis of
brain- and heart-related diseases. Emphasis is given to brain and
heart signals because incomplete interpretations are made by
physicians of these aspects in several situations, and these
partial interpretations lead to major complications. FEATURES
Examines modeling and acquisition of biomedical signals of
different disorders Discusses CAD-based analysis of diagnosis
useful for healthcare Includes all important modalities of
biomedical signals, such as EEG, EMG, MEG, ECG, and PCG Includes
case studies and research directions, including novel approaches
used in advanced healthcare systems This book can be used by a wide
range of users, including students, research scholars, faculty, and
practitioners in the field of biomedical engineering and medical
image analysis and diagnosis.
Computer-aided design (CAD) plays a key role in improving
biomedical systems for various applications. It also helps in the
detection, identification, predication, analysis, and
classification of diseases, in the management of chronic
conditions, and in the delivery of health services. This book
discusses the uses of CAD to solve real-world problems and
challenges in biomedical systems with the help of appropriate case
studies and research simulation results. Aiming to overcome the gap
between CAD and biomedical science, it describes behaviors,
concepts, fundamentals, principles, case studies, and future
directions for research, including the automatic identification of
related disorders using CAD. Features: Proposes CAD for the study
of biomedical signals to understand physiology and to improve
healthcare systems' ability to diagnose and identify health
disorders. Presents concepts of CAD for biomedical modalities in
different disorders. Discusses design and simulation examples,
issues, and challenges. Illustrates bio-potential signals and their
appropriate use in studying different disorders. Includes case
studies, practical examples, and research directions.
Computer-Aided Design and Diagnosis Methods for Biometrical
Applications is aimed at researchers, graduate students in
biomedical engineering, image processing, biomedical technology,
medical imaging, and health informatics.
This book provides a framework for robust and novel biometric
techniques, along with implementation and design strategies. The
theory, principles, pragmatic and modern methods, and future
directions of biometrics are presented, along with in-depth
coverage of biometric applications in driverless cars, automated
and AI-based systems, IoT, and wearable devices. Additional
coverage includes computer vision and pattern recognition,
cybersecurity, cognitive computing, soft biometrics, and the social
impact of biometric technology. The book will be a valuable
reference for researchers, faculty, and practicing professionals
working in biometrics and related fields, such as image processing,
computer vision, and artificial intelligence. Highlights robust and
novel biometrics techniques Provides implementation strategies and
future research directions in the field of biometrics Includes case
studies and emerging applications
This book provides a framework for robust and novel biometric
techniques, along with implementation and design strategies. The
theory, principles, pragmatic and modern methods, and future
directions of biometrics are presented, along with in-depth
coverage of biometric applications in driverless cars, automated
and AI-based systems, IoT, and wearable devices. Additional
coverage includes computer vision and pattern recognition,
cybersecurity, cognitive computing, soft biometrics, and the social
impact of biometric technology. The book will be a valuable
reference for researchers, faculty, and practicing professionals
working in biometrics and related fields, such as image processing,
computer vision, and artificial intelligence. Highlights robust and
novel biometrics techniques Provides implementation strategies and
future research directions in the field of biometrics Includes case
studies and emerging applications
Intelligent Computing Techniques in Biomedical Imaging provides
comprehensive and state-of-the-art applications of Computational
Intelligence techniques used in biomedical image analysis for
disease detection and diagnosis. The book offers readers a stepwise
approach from fundamental to advanced techniques using real-life
medical examples and tutorials. The editors have divided the book
into five sections, from prerequisites to case studies. Section I
presents the prerequisites, where the reader will find fundamental
concepts needed for advanced topics covered later in this book.
This primarily includes a thorough introduction to Artificial
Intelligence, probability theory and statistical learning. The
second section covers Computational Intelligence methods for
medical image acquisition and pre-processing for biomedical images.
In this section, readers will find AI applied to conventional and
advanced biomedical imaging modalities such as X-rays, CT scan,
MRI, Mammography, Ultrasound, MR Spectroscopy, Positron Emission
Tomography (PET), Ultrasound Elastography, Optical Coherence
Tomography (OCT), Functional MRI, Hybrid Modalities, as well as
pre-processing topics such as medical image enhancement,
segmentation, and compression. Section III covers description and
representation of medical images. Here the reader will find various
categories of features and their relevance in different medical
imaging tasks. This section also discusses feature selection
techniques based on filter method, wrapper method, embedded method,
and more. The fourth section covers Computational Intelligence
techniques used for medical image classification, including
Artificial Neural Networks, Support Vector Machines, Decision
Trees, Nearest Neighbor Classifiers, Random Forest, clustering,
extreme learning, Convolution Neural Networks (CNN), and Recurrent
Neural Networks. This section also includes a discussion of
computer aided diagnosis and performance evaluation in radiology.
The final section of Intelligent Computing Techniques in Biomedical
Imaging provides readers with a wealth of real-world Case Studies
for Computational Intelligence techniques in applications such as
neuro-developmental disorders, brain tumor detection, breast cancer
detection, bone fracture detection, pulmonary imaging, thyroid
disorders, imaging technologies in dentistry, diagnosis of ocular
diseases, cardiovascular imaging, and multimodal imaging.
|
You may like...
Wonka
Timothee Chalamet
Blu-ray disc
R250
Discovery Miles 2 500
|