Automated Epileptic Seizure Detection from Electroencephalogram Signals
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Abstract
iii
ABSTARCT
Epileptic seizure is one of the brain’s disorder which can be automatically diagnosed by
measuring and analys
ing the non
-
linear and non
-
stationary behaviour of brain electrical activity.
It is a transient symptom of excessive or synchronous neuronal activity of human brain. It is a
group of disorders of human brain which has affected a large part of world’s popul
ation. Epileptic
seizure disturbs usual pattern of neuronal activity that causes interruption of consciousness, weird
sensation and muscle fits. Early recognition of epileptic seizure helps in improving the
physiological condition of patient.
Human brain e
lectrical activity varies with various
physiological and neurological conditions and is
recorded by multiple scalp mounted electrodes.
The record of human brain electrical activity is called Electroencephalogram (EEG) signals.
The
Electroencephalogram (EEG
) signals are employed to diagnose various human brain disorders.
The Electroencephalogram (EEG) signals contain necessary information for early diagnosis of
epilepsy and epileptic seizures. In epilepsy, the nerve cells send out high amplitude electrical
impulses and the impulses generate events called seizures. In the past, these EEG signals were
diagnosed for any brain disorders by visual examination. However, visual examination is
susceptible to errors and requires good understanding of EEG activity.
T
his research work presents an autonomous system, which is capable of detecting epileptic
seizure from EEG signals automatically. The proposed system is carried out in three
methodological steps viz. pre
-
processing, feature extraction
and classification. T
he purpose of
pre
-
processing is to organize the data in an
orderly manner and to remove noise.
Whereas
,
feature
extraction step extracts time
-
spectral features for proper representation of seizure and non
-
seizure
signals. Further, the extracted features
are then fed to the machine learning algorithms for detection
of seizure and non
-
seizure EEG signals. The proposed system of automatic seizure detection is
validated on publicly available dataset and the results show high detection ability of the proposed
system. In present work, different feature extraction techniques have been employed and analysed
for efficient classification. A comparative study for proposed feature extraction methods is
performed in terms of classification efficiency. In this work, Sup
port Vector Machine and
Artificial Neural Network classifier have been used for classification of Electroencephalogram
signals associated with different physiological condition.
Description
Master of Engineering -ECE
