Eeg Signal Classification Using Machine Learning

Hardback Published on: 31/01/2027
Price: £70.00
Free UK delivery on orders over £25
Coming soon
Published 31/01/2027
Make and edit your lists in your account
No stock available in any shop.
Coming soon
Published 31/01/2027
No stock available in any shop.

Synopsis

This book provides a comprehensive and detailed exploration of electroencephalography (EEG) signal classification in the context of decoding tasks in Brain-Computer Interfaces (BCI). It offers a systematic approach to understanding the role of EEG and its decoding in active, reactive, and passive BCI systems. Readers will find a careful dissection of the primary concepts behind the commonly used machine learning models and their integral connection with EEG decoding. The book further introduces the domain-specific machine learning techniques in different BCI tasks. Furthermore, a substantial emphasis is placed on the interpretation techniques and neuroscientific meaning behind the models. Following that, two significant issues in EEG decoding are discussed. Firstly, the complexity of subject variability, a critical factor in BCI efficiency, is addressed, with discussions on its causes, impacts, and mitigation strategies. Secondly, the book also covers data augmentation techniques, their importance in EEG studies, and the practical implications of their use in BCI applications. Case studies including the popular EEG paradigms are interspersed throughout to provide examples of the principles and strategies discussed.

Publisher information

  • Publisher: World Scientific Publishing Co Pte Ltd
  • ISBN: 9789819818273
  • Number of pages: 200
  • Languages: English

Customer Reviews