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Brain-Computer Interfaces: Advances in Neural Engineering

Editat de Ayman S. El-Baz, Jasjit Suri
en Limba Engleză Paperback – noi 2024
Advances in Neural Engineering: Brain-Computer Interfaces, Volume Two covers the broad spectrum of neural engineering subfields and applications. The set provides a comprehensive review of dominant feature extraction methods and classification algorithms in the brain-computer interfaces for motor imagery tasks. The book's authors discuss existing challenges in the domain of motor imagery brain-computer interface and suggest possible research directions. The field of neural engineering deals with many aspects of basic and clinical problems associated with neural dysfunction, including sensory and motor information, stimulation of the neuromuscular system to control muscle activation and movement, analysis and visualization of complex neural systems, and more.


  • Presents Neural Engineering techniques applied to Signal Processing, including feature extraction methods and classification algorithms in BCI for motor imagery tasks
  • Includes in-depth technical coverage of disruptive neurocircuitry, including neurocircuitry of stress integration, role of basal ganglia neurocircuitry in pathology of psychiatric disorders, and neurocircuitry of anxiety in obsessive-compulsive disorder
  • Covers neural signal processing data analysis and neuroprosthetics applications, including EEG-based BCI paradigms, EEG signal processing in anesthesia, neural networks for intelligent signal processing, and a variety of neuroprosthetic applications
  • Written by engineers to help engineers, computer scientists, researchers, and clinicians understand the technology and applications of signal processing
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Specificații

ISBN-13: 9780323954396
ISBN-10: 0323954391
Pagini: 420
Dimensiuni: 191 x 235 mm
Greutate: 0.45 kg
Editura: ELSEVIER SCIENCE
Seria Advances in Neural Engineering


Cuprins

1. Advances in Human Activity Recognition: Harnessing Machine Learning And Deep Learning With Topological Data Analysis 2. Design And Validation Of A Hybrid Programmable Platform For The Acquisition Of Exg Signals 3. FBSE Based Automated Classification of Motor Imagery EEG Signals in Brain-Computer Interface 4. Automated Detection Of Brain Disease Using Quantum Machine Learning 5. A Study Of The Relationship Of Wavelet Transform Parameters And Their Impact On Eeg Classification Performance 6. Bcis For Stroke Rehabilitation 7. Decoding Imagined Speech For Eeg-Based Bci 8. A Comparison Of Deep Learning Methods And Conventional Methods For Classification Of Ssvep Signals In Brain Computer Interface Framework 9. Benchmarking Convolutional Neural Networks On Continuous Eeg Signals: The Case Of Motor Imagery-Based Bci 10. Advancements in The Diagnosis Of Alzheimer’S Disease (Ad) Through Biomarker Detection 11. Alcoholism Identification By Processing The Eeg Signals Using Oscillatory Modes Decomposition And Machine Learning 12. Investigating the role of cortical rhythms in modulating kinematic synergies and exploring their potential for stroke rehabilitation 13. Stimulus-Independent Non-Invasive Bci Based On Eeg Patterns Of Inner Speech 14. A Review of Modern Brain Computer Interface Investigations And Limits 15. Non-Invasive Brain-Computer Interfaces Using Fnirs, Eeg And Hybrid Fnirs/Eeg 16. Eeg-Based Cognitive Fatigue Recognition Via Machine Learning and Analysis Of Multidomain Features 17. Passive Brain-Computer Interfaces for Cognitive and Pathological Brain Physiological States Monitoring And Control 18. Beyond Brainwaves: Recommendations for Integrating Robotics & Virtual Reality for Eeg-Driven Brain-Computer Interface 19. A Sociotechnical Systems Perspective To Support Brain-Computer Interface Development 20. Assessing Systemic Benefit and Risk in The Development Of Bci Neurotechnology 21. Recent Development of Single Channel EEG-Based Automated Sleep Stage Classification: Review And Future Perspectives