EEGNetv4
Deprecated alias for EEGNet.
Architecture-only repository. Documents the
braindecode.models.EEGNetv4class. No pretrained weights are distributed here. Instantiate the model and train it on your own data.
Quick start
pip install braindecode
from braindecode.models import EEGNetv4
model = EEGNetv4(
n_chans=22,
sfreq=250,
input_window_seconds=4.0,
n_outputs=4,
)
The signal-shape arguments above are illustrative defaults — adjust to match your recording.
Documentation
- Full API reference: https://braindecode.org/stable/generated/braindecode.models.EEGNetv4.html
- Interactive browser (live instantiation, parameter counts): https://huggingface.co/spaces/braindecode/model-explorer
- Source on GitHub: https://github.com/braindecode/braindecode/blob/master/braindecode/models/eegnet.py#L353
Parameters
(see source for parameter list)
Citation
Cite the original architecture paper (see References above) and braindecode:
@article{aristimunha2025braindecode,
title = {Braindecode: a deep learning library for raw electrophysiological data},
author = {Aristimunha, Bruno and others},
journal = {Zenodo},
year = {2025},
doi = {10.5281/zenodo.17699192},
}
License
BSD-3-Clause for the model code (matching braindecode). Pretraining-derived weights, if you fine-tune from a checkpoint, inherit the licence of that checkpoint and its training corpus.