A CNN model developed as a feature extractor and classifier for SSVEP-based Brain-Computer Interface (BCI) for Migraine which may potentially be implemented in neurofeedback training or diagnostic protocol.
Note: This project is adapted from EEGNet architecture based on pytorch framework.
— Data collection
— Data preprocessing
— Modeling
— Evaluation
You can read more about this project here!
Medium: link
— dataset
• migraine (18 subjects)
• control (18 subjects)
— preprocessed
• feat (for model input)
• label (class annotation)
— Jupyter notebook
— model
MNE, Pytorch, Numpy, Pandas, Matplotlib, sklearn
This project is supported by AI Builders program