The State of the Art in Feature Extraction Methods for EEG Classification
Epileptic seizure is a neurological disease that is common around the world and there are many types (e.g. Focal aware seizures and atonic seizure) that are caused by synchronous or abnormal neuronal activity in the brain. A number of techniques are available to detect the brain activities that lead...
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doaj-b9f0ee03a710450c901449f4eeb919552020-11-24T21:36:01ZengUniversity of Human DevelopmentUHD Journal of Science and Technology2521-42092521-42172019-07-01321623https://doi.org/10.21928/uhdjst.v3n2y2019.pp16-23The State of the Art in Feature Extraction Methods for EEG ClassificationHoger Mahmud Hussen0Department of Computer Science – College of Science and Technology - University of Human Development, Sulaymaniyah, IraqEpileptic seizure is a neurological disease that is common around the world and there are many types (e.g. Focal aware seizures and atonic seizure) that are caused by synchronous or abnormal neuronal activity in the brain. A number of techniques are available to detect the brain activities that lead to Epileptic seizures; one of the most common one is Electroencephalogram (EEG) that uses visual scanning to measure brain activities generated by nerve cells in the cerebral cortex. The techniques make use of different features detected by EEG to decide on the occurrence and type of seizures. In this paper we review EEG features proposed by different researches for the purpose of Epileptic seizure detection, also analyze, and compare the performance of the proposed features.http://journals.uhd.edu.iq/index.php/uhdjst/article/view/386/220ClassificationElectroencephalogramEpileptic Seizure DetectionFeature ExtractionTime-frequency Analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hoger Mahmud Hussen |
spellingShingle |
Hoger Mahmud Hussen The State of the Art in Feature Extraction Methods for EEG Classification UHD Journal of Science and Technology Classification Electroencephalogram Epileptic Seizure Detection Feature Extraction Time-frequency Analysis |
author_facet |
Hoger Mahmud Hussen |
author_sort |
Hoger Mahmud Hussen |
title |
The State of the Art in Feature Extraction Methods for EEG Classification |
title_short |
The State of the Art in Feature Extraction Methods for EEG Classification |
title_full |
The State of the Art in Feature Extraction Methods for EEG Classification |
title_fullStr |
The State of the Art in Feature Extraction Methods for EEG Classification |
title_full_unstemmed |
The State of the Art in Feature Extraction Methods for EEG Classification |
title_sort |
state of the art in feature extraction methods for eeg classification |
publisher |
University of Human Development |
series |
UHD Journal of Science and Technology |
issn |
2521-4209 2521-4217 |
publishDate |
2019-07-01 |
description |
Epileptic seizure is a neurological disease that is common around the world and there are many types (e.g. Focal aware seizures and atonic seizure) that are caused by synchronous or abnormal neuronal activity in the brain. A number of techniques are available to detect the brain activities that lead to Epileptic seizures; one of the most common one is Electroencephalogram (EEG) that uses visual scanning to measure brain activities generated by nerve cells in the cerebral cortex. The techniques make use of different features detected by EEG to decide on the occurrence and type of seizures. In this paper we review EEG features proposed by different researches for the purpose of Epileptic seizure detection, also analyze, and compare the performance of the proposed features. |
topic |
Classification Electroencephalogram Epileptic Seizure Detection Feature Extraction Time-frequency Analysis |
url |
http://journals.uhd.edu.iq/index.php/uhdjst/article/view/386/220 |
work_keys_str_mv |
AT hogermahmudhussen thestateoftheartinfeatureextractionmethodsforeegclassification AT hogermahmudhussen stateoftheartinfeatureextractionmethodsforeegclassification |
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1725942760068874240 |