|
|
Showing 1 - 4 of
4 matches in All Departments
Recent advancements in signal processing and computerised methods
are expected to underpin the future progress of biomedical research
and technology, particularly in measuring and assessing signals and
images from the human body. This book focuses on singular spectrum
analysis (SSA), an effective approach for single channel signal
analysis, and its bivariate, multivariate, tensor based,
complex-valued, quaternion-valued and robust variants. SSA
currently has numerous applications in detecting abnormalities in
quasi-periodic biosignals, such as electrocardiograms, (ECGs or
EKGs), oxygen levels, arterial pressure, and electroencephalograms
(EEGs). Singular Spectrum Analysis of Biomedical Signals presents
relatively newly applied concepts for biomedical applications of
SSA, including: Signal source separation, extraction,
decomposition, and factorization Physiological, biological, and
biochemical signal processing A new SSA grouping algorithm for
filtering and noise reduction of genetics data Prediction of
various clinical events The book introduces a new mathematical and
signal processing technique for the decomposition of widely
available single channel biomedical data. It also provides
illustrations of new signal processing results in the form of
signals, graphs, images, and tables to reinforce understanding of
the related concepts. Singular Spectrum Analysis of Biomedical
Signals enhances current clinical knowledge and aids physicians in
improving diagnosis, treatment and monitoring some clinical
abnormalities. It also lays groundwork for progress in SSA by
making suggestions for future research.
This book provides a broad introduction to computational aspects of
Singular Spectrum Analysis (SSA) which is a non-parametric
technique and requires no prior assumptions such as stationarity,
normality or linearity of the series. This book is unique as it not
only details the theoretical aspects underlying SSA, but also
provides a comprehensive guide enabling the user to apply the
theory in practice using the R software. Further, it provides the
user with step- by- step coding and guidance for the practical
application of the SSA technique to analyze their time series
databases using R. The first two chapters present basic notions of
univariate and multivariate SSA and their implementations in R
environment. The next chapters discuss the applications of SSA to
change point detection, missing-data imputation, smoothing and
filtering. This book is appropriate for researchers, upper level
students (masters level and beyond) and practitioners wishing to
revive their knowledge of times series analysis or to quickly learn
about the main mechanisms of SSA.
As technology continues to revolutionise today's economy, Big Data,
Blockchain and Cryptocurrency are rapidly transforming themselves
into mainstream functions within the financial services industry.
This book examines each concept individually, analysing the
opportunities and challenges they bring and exploring the potential
for future development. The authors further evaluate the fusion of
these three important products of the FinTech revolution,
illustrating their combined influence on the digital economy.
Providing a comprehensive analysis of three innovative
technologies, this timely book will appeal to scholars researching
innovation in the finance industry and financial services
technology more specifically.
Recent advancements in signal processing and computerised methods
are expected to underpin the future progress of biomedical research
and technology, particularly in measuring and assessing signals and
images from the human body. This book focuses on singular spectrum
analysis (SSA), an effective approach for single channel signal
analysis, and its bivariate, multivariate, tensor based,
complex-valued, quaternion-valued and robust variants. SSA
currently has numerous applications in detecting abnormalities in
quasi-periodic biosignals, such as electrocardiograms, (ECGs or
EKGs), oxygen levels, arterial pressure, and electroencephalograms
(EEGs). Singular Spectrum Analysis of Biomedical Signals presents
relatively newly applied concepts for biomedical applications of
SSA, including: Signal source separation, extraction,
decomposition, and factorization Physiological, biological, and
biochemical signal processing A new SSA grouping algorithm for
filtering and noise reduction of genetics data Prediction of
various clinical events The book introduces a new mathematical and
signal processing technique for the decomposition of widely
available single channel biomedical data. It also provides
illustrations of new signal processing results in the form of
signals, graphs, images, and tables to reinforce understanding of
the related concepts. Singular Spectrum Analysis of Biomedical
Signals enhances current clinical knowledge and aids physicians in
improving diagnosis, treatment and monitoring some clinical
abnormalities. It also lays groundwork for progress in SSA by
making suggestions for future research.
|
|