Artificial Neural Network Based Approach to EEG Signal Simulation

@article{Tomasevic2012ArtificialNN,
  title={Artificial Neural Network Based Approach to EEG Signal Simulation},
  author={Nikola M. Tomasevic and Aleksandar Neskovic and Natasa Neskovic},
  journal={International journal of neural systems},
  year={2012},
  volume={22 3},
  pages={
          1250008
        }
}
In this paper a new approach to the electroencephalogram (EEG) signal simulation based on the artificial neural networks (ANN) is proposed. The aim was to simulate the spontaneous human EEG background activity based solely on the experimentally acquired EEG data. Therefore, an EEG measurement campaign was conducted on a healthy awake adult in order to obtain an adequate ANN training data set. As demonstration of the performance of the ANN based approach, comparisons were made against… 
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