Title of article :
Epilepsy Detection in EEG Using Grassmann Discriminant Analysis Method
Author/Authors :
Yu, Hongbin School of Artificial Intelligence and Computer Science - Jiangnan University - Wuxi, China , Fan, Chao School of Artificial Intelligence and Computer Science - Jiangnan University - Wuxi, China , Zhang, Yunting Institute of Commerce of Digital Art Animation - Wuxi, China
Abstract :
Epilepsy is marked by seizures stemming from abnormal electrical activity in the brain, causing involuntary movement or
behavior. Many scientists have been working hard to explore the cause of epilepsy and seek the prevention and treatment. In
the field of machine learning, epileptic diagnosis based on EEG signal has been a very hot research topic; many methods
have been proposed, and considerable progress has been achieved. However, resorting the epileptic diagnosis techniques based
on EEG to the reality applications still faces many challenges. Low signal-to-noise ratio (SNR) is one of the most important
methodological challenges for EEG data collection and analysis. This paper discusses an automated diagnostic method for
epileptic detection using a Fréchet Mean embedded in the Grassmann manifold analysis. Fréchet mean-based Grassmann
discriminant analysis (FMGDA) algorithm to implement the EEG data dimensionality reduction and clustering task. The
method is resorted to reduce Grassmann data from high-dimensional data to a relative lower-dimensional data and maximize
between-class distance and minimize within-class distance simultaneously. Every EEG feature is mapped into the Grassmann
manifold space first and then resort the Fréchet mean to represent the clustering center to carry out the clustering work. We
designed a detailed experimental scheme to test the performance of our proposed algorithm; the test is assessed on several
benchmark datasets. Experimental results have delivered that our approach leads to a significant improvement over state-ofthe-art Grassmann manifold methods.
Keywords :
EEG , Discriminant , Analysis , FMGDA , Epilepsy
Journal title :
Computational and Mathematical Methods in Medicine