HVD-LSTM based recognition of epileptic seizures and normal human activity
Computers in Biology and Medicine 136: 104684-104684
Article 2021 English
Authors
PK
Pritam Khan
YK
Yasin Khan
SK
Sudhir Kumar
Abstract
1 min read
In this paper, we detect the occurrence of epileptic seizures in patients as well as activities namely stand, walk, and exercise in healthy persons, leveraging EEG (electroencephalogram) signals. Using Hilbert vibration decomposition (HVD) on non-linear and non-stationary EEG signal, we obtain multiple monocomponents varying in terms of amplitude and frequency. After decomposition, we extract features from the monocomponent matrix of the EEG signals. The instantaneous amplitude of the HVD monocomponents varies because of the motion artifacts present in EEG signals. Hence, the acquired statistical features from the instantaneous amplitude help in identifying the epileptic seizures and the normal human activities. The features selected by correlation-based Q-score are classified using an LSTM (Long Short Term Memory) based deep learning model in which the feature-based weight update maximizes the classification accuracy. For epilepsy diagnosis using the Bonn dataset and activity recognition leveraging our Sensor Networks Research Lab (SNRL) data, we achieve testing classification accuracies of 96.00% and 83.30% respectively through our proposed method.
Erik D. Fagerholm, Chayanin Tangwiriyasakul, Karl Friston, Inês R. Violante, Steven Williams, David W. Carmichael, Suejen Perani, Federico Turkheimer, Rosalyn Moran, Robert Leech, Mark P. Richardson
Erik D. Fagerholm, Chayanin Tangwiriyasakul, Karl Friston, Inês R. Violante, Steven Williams, David W. Carmichael, Suejen Perani, Federico Turkheimer, Rosalyn Moran, Robert Leech, Mark P. Richardson
Discussion(0)
No comments yet. Be the first to comment.