TY - GEN digital ID - 131565681 TI - EEG Signal Analysis and Classification : Techniques and Applications AU - Siuly, Siuly AU - Li, Yan AU - Zhang, Yanchun PY - 2016 SN - 9783319476537 PB - Cham Springer International Publishing DB - UniCat KW - Human biochemistry KW - Applied physical engineering KW - Information systems KW - Artificial intelligence. Robotics. Simulation. Graphics KW - Computer. Automation KW - DIP (documentimage processing) KW - beeldverwerking KW - medische biochemie KW - machine learning KW - biochemie KW - informatiesystemen KW - medische informatica KW - KI (kunstmatige intelligentie) KW - ingenieurswetenschappen KW - robots KW - signaalverwerking KW - AI (artificiële intelligentie) UR - https://www.unicat.be/uniCat?func=search&query=sysid:131565681 AB - This book presents advanced methodologies in two areas related to electroencephalogram (EEG) signals: detection of epileptic seizures and identification of mental states in brain computer interface (BCI) systems. The proposed methods enable the extraction of this vital information from EEG signals in order to accurately detect abnormalities revealed by the EEG. New methods will relieve the time-consuming and error-prone practices that are currently in use. Common signal processing methodologies include wavelet transformation and Fourier transformation, but these methods are not capable of managing the size of EEG data. Addressing the issue, this book examines new EEG signal analysis approaches with a combination of statistical techniques (e.g. random sampling, optimum allocation) and machine learning methods. The developed methods provide better results than the existing methods. The book also offers applications of the developed methodologies that have been tested on several real-time benchmark databases. This book concludes with thoughts on the future of the field and anticipated research challenges. It gives new direction to the field of analysis and classification of EEG signals through these more efficient methodologies. Researchers and experts will benefit from its suggested improvements to the current computer-aided based diagnostic systems for the precise analysis and management of EEG signals. ER -