IJRE – Volume 3 Issue 4 Paper 6

DETECTION OF EPILEPTIC SIGNAL USING EEG

Author’s Name :  S. A.Tale| Devendra Dubey | Ram Metkar

Volume 03 Issue 01  Year 2016  ISSN No:  2349-252X  Page no: 21-24

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Abstract:

Epileptic seizure occurs as a result of abnormal transient disturbance in the electrical activities of the brain. The electrical activities of brain fluctuate frequently and can be analyzed using electroencephalogram (EEG) signals. Therefore, the EEG signals are commonly used signals for obtaining the information related to the states of brain. The EEG recordings of an epileptic patient contain a large amount of EEG data which may require time-consuming manual interpretations. Thus, automatic EEG signal analysis using advanced signal processing techniques with the statistical features plays a significant role to recognize epilepsy in EEG recordings and also reduce the computation complexity.

Keywords:

EEG; Feature Information;EEG Signal Analysis.

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