--- license: mit --- # Model Card for pre-trained EEGNet models on mental imagery datasets Collection of 12 neural networks trained for motor imagery decoding along with evaluation results. ## Model Details - **Architecture:** [EEGNetv4](https://braindecode.org/stable/generated/braindecode.models.EEGNetv4.html) by [Lawhern et. al (2018)](https://doi.org/10.1088/1741-2552/aace8c). ## How to Get Started with the Model - **Download and load in memory:** ```python import pickle # download the model from the hub: path_kwargs = hf_hub_download( repo_id='PierreGtch/EEGNetv4', filename='EEGNetv4_Lee2019_MI/kwargs.pkl', ) path_params = hf_hub_download( repo_id='PierreGtch/EEGNetv4', filename='EEGNetv4_Lee2019_MI/model-params.pkl', ) with open(path_kwargs, 'rb') as f: kwargs = pickle.load(f) module_cls = kwargs['module_cls'] module_kwargs = kwargs['module_kwargs'] # load the model with pre-trained weights: torch_module = module_cls(**module_kwargs) ``` - **Details:** more details and potential use-case scenarios can be found in the notebook [here](https://neurotechlab.socsci.ru.nl/resources/pretrained_imagery_models/) ## Training Details - **Training dataset:** Each model was trained on the dataset with corresponding name in the MOABB library (see [datasets list](https://neurotechx.github.io/moabb/dataset_summary.html#motor-imagery)). - **Details:** For details on the training procedure, please refer to the poster [here](https://neurotechlab.socsci.ru.nl/resources/pretrained_imagery_models/). ## Evaluation - **Cross-dataset transfer:** The transfer abilities of the models was tested on the same datasets as for training. - **Details:** The evaluation procedure can be found in the poster [here](https://neurotechlab.socsci.ru.nl/resources/pretrained_imagery_models/) and the article *Transfer Learning between Motor Imagery datasets using Deep Learning*. - **Results:** The evaluation results can be found under the [`results/`](https://huggingface.co/PierreGtch/EEGNetv4/tree/main/results) folder. ## Model Card Authors - **Modedels training and results by:** Pierre Guetschel