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논문검색

Epilepsy Seizure Detection Using Wavelet Support Vector Machine Classifier

초록

영어

Epilepsy is a perilous neurological disease covering about 4-5% of total population of the world. Its main characteristics are seizures which occur due to certain disturbance in brain function. During epileptic seizures the patient is unaware of their physical as well as mental condition and hence physical injury may occur. Proper health care must be provided to the patients and this can be achieved only if the seizures are detected correctly in time. In this dissertation work, a system is designed using wavelet decomposition method and different training algorithms to train the neural network for classification of the EEG signals. The system was tested and compared with Support Vector Machine (SVM) classifier. The system accuracy comes out to be 99.97%.

목차

Abstract
 1. Introduction
  1.1 EEG Signals
  1.2 International 10-20 System
  1.3 Wavelet Transform
  1.4 Energy Distribution
  1.5 Artificial Neural Networks
  1.6 Support Vector Machine
 2. Methodology
 3. Methods
  3.3 Participants
  3.4 Apparatus
 4. Results and Discussion
  4.3 Results with Different Training Algorithms
 5. Conclusion
 References

저자정보

  • Prabhpreet Kaur Bhatia CTITR, Jalandhar
  • Anurag Sharma CTITR, Jalandhar

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