In this paper, a software-based neural network is developed for the purpose of detecting seizures from raw EEG signals. Detecting epileptic seizures manually is a long tedious process, creating the need for automatic detections systems. A neural network is designed based on a convolutional neural network (CNN) and trained on the electroencephalogram (EEG) raw signal dataset "CHB-MIT". Deep learning has not been fully explored in seizure detection, but rather only classical machine learning algorithms that need feature extraction. There is a need to explore deep learning which eliminates manual feature extraction and enables real-time detection of raw signals. We conducted training and inference on the CHB-MIT dataset with a designed CNN in software and achieved an accuracy of 96.74%. The classifier can later be transformed into a portable system on chip (SoC) by realizing it on reconfigurable hardware with the necessary peripherals for acquisition.
Nhan Duy TruongAnh NguyenLevin KuhlmannMohammad Reza BonyadiJiawei YangSamuel J. IppolitoOmid Kavehei
Bassem BouazizLotfi ChaâriHadj BatatiaAntonio Quintero-Rincón