Detection the Character Wave in Epileptic EEG by Wavelet

نویسندگان

  • CHEN Huafu
  • NIU Hai
چکیده

me spe yn pro e cc tra sin beh sep e It two-dimensional signals can be reconstructed, with a axima of their Electro encephalography (EEG) is an important ical tool in theoretical study, diagnosis and tment of several neurological disorders such as lepsy and sleeping disorders. For the most part, an epilepsy is the intrinsic brain pathology. Its jor manifestation in the epileptic seizure, which y involve a discrete part of the brain partial or the ole cerebral mass generalized. Ictal EEG is racterized by repetitive high-amplitude activity, er fast s es, slow waves, or spickandwave plexes. This activity varies is depending on vary of lepsy . The current diagnosis tool of the epilepsy ased on both the patients’ clinical records and the G where the EEG is a determinative factor. The lysis of EEG is mainly implemented by directly ding EEG recordings in urrent practice thus king it a high burden and the result will be affected many subjective factors . The rapid improvement the performance ratio of computers and storage ices have made long EEG recordings feasible but erts capable of examining these recordings nning possibly over twelve hours are in great rtage, hence a system capable of p

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تاریخ انتشار 2010