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Technological advancements have enhanced all functions of society
and revolutionized the healthcare field. Smart healthcare
applications and practices have grown within the past decade,
strengthening overall care. Biomedical signals observe
physiological activities, which provide essential information to
healthcare professionals. Biomedical signal processing can be
optimized through artificial intelligence (AI) and machine learning
(ML), presenting the next step towards smart healthcare. AI-Enabled
Smart Healthcare Using Biomedical Signals will not only cover the
mathematical description of the AI- and ML-based methods, but also
analyze and demonstrate the usability of different AI methods for a
range of biomedical signals. The book covers all types of
biomedical signals helpful for smart healthcare applications.
Covering topics such as automated diagnosis, emotion
identification, and frequency discrimination techniques, this
premier reference source is an excellent resource for healthcare
administration, biomedical engineers, medical laboratory
technicians, medical technology assistants, computer scientists,
libraries, students and faculty of higher education, researchers,
and academicians.
Artificial intelligence (AI) is revolutionizing every aspect of
human life including human healthcare and wellbeing management.
Various types of intelligent healthcare engineering applications
have been created that help to address patient healthcare and
outcomes such as identifying diseases and gathering patient
information. Advancements in AI applications in healthcare continue
to be sought to aid rapid disease detection, health monitoring, and
prescription drug tracking. Advancement of Artificial Intelligence
in Healthcare Engineering is an essential scholarly publication
that provides comprehensive research on the possible applications
of machine learning, deep learning, soft computing, and
evolutionary computing techniques in the design, implementation,
and optimization of healthcare engineering solutions. Featuring a
wide range of topics such as genetic algorithms, mobile robotics,
and neuroinformatics, this book is ideal for engineers, technology
developers, IT consultants, hospital administrators, academicians,
healthcare professionals, practitioners, researchers, and students.
Most of the real-life signals are non-stationary in nature. The
examples of such signals include biomedical signals, communication
signals, speech, earthquake signals, vibration signals, etc.
Time-frequency analysis plays an important role for extracting the
meaningful information from these signals. The book presents
time-frequency analysis methods together with their various
applications. The basic concepts of signals and different ways of
representing signals have been provided. The various time-frequency
analysis techniques namely, short-time Fourier transform, wavelet
transform, quadratic time-frequency transforms, advanced wavelet
transforms, and adaptive time-frequency transforms have been
explained. The fundamentals related to these methods are included.
The various examples have been included in the book to explain the
presented concepts effectively. The recently developed
time-frequency analysis techniques such as, Fourier-Bessel series
expansion-based methods, synchrosqueezed wavelet transform,
tunable-Q wavelet transform, iterative eigenvalue decomposition of
Hankel matrix, variational mode decomposition, Fourier
decomposition method, etc. have been explained in the book. The
numerous applications of time-frequency analysis techniques in
various research areas have been demonstrated. This book covers
basic concepts of signals, time-frequency analysis, and various
conventional and advanced time-frequency analysis methods along
with their applications. The set of problems included in the book
will be helpful to gain an expertise in time-frequency analysis.
The material presented in this book will be useful for students,
academicians, and researchers to understand the fundamentals and
applications related to time-frequency analysis.
This book covers latest advancements in the areas of machine
learning, computer vision, pattern recognition, computational
learning theory, big data analytics, network intelligence, signal
processing and their applications in real world. The topics covered
in machine learning involves feature extraction, variants of
support vector machine (SVM), extreme learning machine (ELM),
artificial neural network (ANN) and other areas in machine
learning. The mathematical analysis of computer vision and pattern
recognition involves the use of geometric techniques, scene
understanding and modelling from video, 3D object recognition,
localization and tracking, medical image analysis and so on.
Computational learning theory involves different kinds of learning
like incremental, online, reinforcement, manifold, multi-task,
semi-supervised, etc. Further, it covers the real-time challenges
involved while processing big data analytics and stream processing
with the integration of smart data computing services and
interconnectivity. Additionally, it covers the recent developments
to network intelligence for analyzing the network information and
thereby adapting the algorithms dynamically to improve the
efficiency. In the last, it includes the progress in signal
processing to process the normal and abnormal categories of
real-world signals, for instance signals generated from IoT
devices, smart systems, speech, videos, etc., and involves
biomedical signal processing: electrocardiogram (ECG),
electroencephalogram (EEG), magnetoencephalography (MEG) and
electromyogram (EMG).
The book covers the most recent developments in machine learning,
signal analysis, and their applications. It covers the topics of
machine intelligence such as: deep learning, soft computing
approaches, support vector machines (SVMs), least square SVMs
(LSSVMs) and their variants; and covers the topics of signal
analysis such as: biomedical signals including electroencephalogram
(EEG), magnetoencephalography (MEG), electrocardiogram (ECG) and
electromyogram (EMG) as well as other signals such as speech
signals, communication signals, vibration signals, image, and
video. Further, it analyzes normal and abnormal categories of
real-world signals, for example normal and epileptic EEG signals
using numerous classification techniques. The book is envisioned
for researchers and graduate students in Computer Science and
Engineering, Electrical Engineering, Applied Mathematics, and
Biomedical Signal Processing.
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