A Review on Methodologies for detection of Epilepsy using EEG Signals
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چکیده
In this paper we are working on literature review of EEG Signals. In our paper synchronization analysis is also done on driven oscillators and it is used to know whether the oscillators are in Phase Synchronization (PS) or in non-Phase Synchronization (non-PS). The application of the PS is done on biomedical signals and how the biomedical signals can be distinguished based on PS is studied. Synchronization analysis also includes Generalized Synchronization (GS) based on recurrences and its application to driven oscillators and biomedical signals is observed. KeywordBiomedical Signals, CRP, EEG Signals, Recurrence Plots.
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تاریخ انتشار 2016