A novel approach for identifying epileptic signals using signal processing
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Abstract
Abstract
Electroencephalography is a technical method known to analyses the behavior of human
brain. The record of neurological activity is highly effective when neuronal diseases like
epilepsy are to be studied. Although, the biochemical or neuro-physical causes of epilepsy
remain unknown but its detection and diagnosis is no more a mystery because of EEG
records. The precise and timely diagnosis of disease prevents a lot of trouble. It is
challenging to handle large and bulky EEG records. This research work aims at
developing an automated method to differentiate the EEG records during an epileptic
seizure from the normal EEG records. The wavelet transform has an ability to zoom in the
signal to is most resourceful parts and thus remove any ambiguous information from the
signal. Further, the generation of useful feature set helps in setting up differentiation
criteria between two types of signals. Next, the classification using neural network and
support vector machine completes the process to identify the diseased signals. Also, this
study contemplates the dissimilarity between two classifying techniques in order to
determine the most efficient method for rational classification. The method proves to be
very efficient on the pre-recorded data. The data has been acquired from universally
available source mentioned in the references. The work can be extended further on
simultaneous monitoring of EEG records. Also, this work can be applied to determine
other neurological disorders, such as schizophrenia.
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ME-WC-Thesis
