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Brain Seizure Detection and Classification Using
Electroencephalographic Signals presents EEG signal processing and
analysis with high performance feature extraction. The book covers
the feature selection method based on One-way ANOVA, along with
high performance machine learning classifiers for the
classification of EEG signals in normal and epileptic EEG signals.
In addition, the authors also present new methods of feature
extraction, including Singular Spectrum-Empirical Wavelet Transform
(SSEWT) for improved classification of seizures in significant
seizure-types, specifically epileptic and Non-Epileptic Seizures
(NES). The performance of the system is compared with existing
methods of feature extraction using Wavelet Transform (WT) and
Empirical Wavelet Transform (EWT). The book's objective is to
analyze the EEG signals to observe abnormalities of brain
activities called epileptic seizure. Seizure is a neurological
disorder in which too many neurons are excited at the same time and
are triggered by brain injury or by chemical imbalance.
Chronic Obstructive Pulmonary Disease (COPD) Diagnosis using
Electromyography (EMG) presents a new and innovative method of COPD
diagnosis using EMG to analyze sternomastoid muscle activity using
features extraction and classification. The book describes the
methodology of EMG analysis, the slope-based onset detection
algorithm and SEMG analysis in time, frequency and time frequency
domain analyses. It also explores the identification of frequencies
for single frequency Continuous Wavelet Transform (CWT) analysis
and feature extraction and selection for successful classification
COPD into its severity grades. The book provides a compilation of
all techniques used in the literatures and emphasizes newly
proposed techniques for the early detection of COPD. Fully
comprehensive, the book includes discussion of limitations of
existing methods for COPD diagnosis and introduces new efficient
methods for COPD identification, classification and early
diagnosis.
EEG-Based Diagnosis of Alzheimer Disease: A Review and Novel
Approaches for Feature Extraction and Classification Techniques
provides a practical and easy-to-use guide for researchers in EEG
signal processing techniques, Alzheimer's disease, and dementia
diagnostics. The book examines different features of EEG signals
used to properly diagnose Alzheimer's Disease early, presenting new
and innovative results in the extraction and classification of
Alzheimer's Disease using EEG signals. This book brings together
the use of different EEG features, such as linear and nonlinear
features, which play a significant role in diagnosing Alzheimer's
Disease.
This book offers a design research methodology intended to improve
the quality of design research- its academic credibility,
industrial significance and societal contribution by enabling more
thorough, efficient and effective procedures.
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