Home
Advanced Electroencephalography Analytical Methods: Fundamentals, Acquisition, and Applications
Barnes and Noble
Loading Inventory...
Advanced Electroencephalography Analytical Methods: Fundamentals, Acquisition, and Applications in Franklin, TN
Current price: $130.00

Barnes and Noble
Advanced Electroencephalography Analytical Methods: Fundamentals, Acquisition, and Applications in Franklin, TN
Current price: $130.00
Loading Inventory...
Size: Hardcover
Advanced Electroencephalography Analytical Methods: Fundamentals, Acquisition, and Applications
presents the theoretical basis and applications of electroencephalography (EEG) signals in neuroscience, involving signal analysis, processing, signal acquisition, representation, and applications of EEG signal analysis using non-linear approaches and machine learning. It explains principles of neurophysiology, linear signal processing, computational intelligence, and the nature of signals including machine learning. Applications involve computer-aided diagnosis, brain-computer interfaces, rehabilitation engineering, and applied neuroscience.
This book:
Includes a comprehensive review on biomedical signals nature and acquisition aspects
Focuses on selected applications of neuroscience/cardiovascular/muscle-related biomedical areas
Provides a machine learning update to a classical biomedical signal processing approach
Explains deep learning and application to biomedical signal processing and analysis
Explores relevant biomedical engineering and neuroscience state-of-the-art applications
This book is intended for researchers and graduate students in biomedical signal processing, electrical engineering, neuroscience, and computer science.
presents the theoretical basis and applications of electroencephalography (EEG) signals in neuroscience, involving signal analysis, processing, signal acquisition, representation, and applications of EEG signal analysis using non-linear approaches and machine learning. It explains principles of neurophysiology, linear signal processing, computational intelligence, and the nature of signals including machine learning. Applications involve computer-aided diagnosis, brain-computer interfaces, rehabilitation engineering, and applied neuroscience.
This book:
Includes a comprehensive review on biomedical signals nature and acquisition aspects
Focuses on selected applications of neuroscience/cardiovascular/muscle-related biomedical areas
Provides a machine learning update to a classical biomedical signal processing approach
Explains deep learning and application to biomedical signal processing and analysis
Explores relevant biomedical engineering and neuroscience state-of-the-art applications
This book is intended for researchers and graduate students in biomedical signal processing, electrical engineering, neuroscience, and computer science.
Advanced Electroencephalography Analytical Methods: Fundamentals, Acquisition, and Applications
presents the theoretical basis and applications of electroencephalography (EEG) signals in neuroscience, involving signal analysis, processing, signal acquisition, representation, and applications of EEG signal analysis using non-linear approaches and machine learning. It explains principles of neurophysiology, linear signal processing, computational intelligence, and the nature of signals including machine learning. Applications involve computer-aided diagnosis, brain-computer interfaces, rehabilitation engineering, and applied neuroscience.
This book:
Includes a comprehensive review on biomedical signals nature and acquisition aspects
Focuses on selected applications of neuroscience/cardiovascular/muscle-related biomedical areas
Provides a machine learning update to a classical biomedical signal processing approach
Explains deep learning and application to biomedical signal processing and analysis
Explores relevant biomedical engineering and neuroscience state-of-the-art applications
This book is intended for researchers and graduate students in biomedical signal processing, electrical engineering, neuroscience, and computer science.
presents the theoretical basis and applications of electroencephalography (EEG) signals in neuroscience, involving signal analysis, processing, signal acquisition, representation, and applications of EEG signal analysis using non-linear approaches and machine learning. It explains principles of neurophysiology, linear signal processing, computational intelligence, and the nature of signals including machine learning. Applications involve computer-aided diagnosis, brain-computer interfaces, rehabilitation engineering, and applied neuroscience.
This book:
Includes a comprehensive review on biomedical signals nature and acquisition aspects
Focuses on selected applications of neuroscience/cardiovascular/muscle-related biomedical areas
Provides a machine learning update to a classical biomedical signal processing approach
Explains deep learning and application to biomedical signal processing and analysis
Explores relevant biomedical engineering and neuroscience state-of-the-art applications
This book is intended for researchers and graduate students in biomedical signal processing, electrical engineering, neuroscience, and computer science.

















