Hybrid Deep Learning Model for epileptic seizure classification by using 1D-CNN with multi-head attention mechanism
- URL: http://arxiv.org/abs/2501.10342v1
- Date: Fri, 17 Jan 2025 18:33:58 GMT
- Title: Hybrid Deep Learning Model for epileptic seizure classification by using 1D-CNN with multi-head attention mechanism
- Authors: Mohammed Guhdar, Ramadhan J. Mstafa, Abdulhakeem O. Mohammed,
- Abstract summary: Epileptic seizures result from sudden abnormal electrical activity in the brain.
People with epilepsy often face significant employment challenges due to safety concerns in certain work environments.
This certainly limits job options and economic opportunities for those living with epilepsy.
- Score: 2.355460994057843
- License:
- Abstract: Epilepsy is a prevalent neurological disorder globally, impacting around 50 million people \cite{WHO_epilepsy_50million}. Epileptic seizures result from sudden abnormal electrical activity in the brain, which can be read as sudden and significant changes in the EEG signal of the brain. The signal can vary in severity and frequency, which results in loss of consciousness and muscle contractions for a short period of time \cite{epilepsyfoundation_myoclonic}. Individuals with epilepsy often face significant employment challenges due to safety concerns in certain work environments. Many jobs that involve working at heights, operating heavy machinery, or in other potentially hazardous settings may be restricted for people with seizure disorders. This certainly limits job options and economic opportunities for those living with epilepsy.
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