EEGNet implementation of 2 BCI competition datasets:
-
Kaggle competition Dataset: https://www.kaggle.com/c/inria-bci-challenge/data
-
BCI Competition III Dataset 2: http://www.bbci.de/competition/iii/#data_set_ii
EEGNet CNN architecture PyTorch implementation borrowed from : Sriram Ravindran: https://github.com/aliasvishnu/EEGNet
All the data used in the codes was earlier bandpassed filtered in MATLAB with a 2nd order Butterworth Filter from 0.1-30 Hz
FLOW:
-
Run the .m filtering file on the dataset obtained from the link for the BCI COmpetition Dataset
-
Run the file BCI_III_DS_2_TestSet_PreProcessing.ipynb on the filtered datasets obtained from the Matlab code.
-
RUn the BCI_III_DS_2_Filtered_Downsampled.ipynb to get results on downsampled data at 120 Hz
-
Modify the BCI_III_DS_2_TestSet_PreProcessing.ipynb to get results at original data of 240 Hz and then run BCI_III_DS_2_Filtered Data.ipynb to get results.
- Run the matlab preprocessing file same as above.
- Run Kaggle Dataset- ERN with appropriate file path to get results.