--- license: bsd-3-clause library_name: braindecode pipeline_tag: feature-extraction tags: - eeg - biosignal - pytorch - neuroscience - braindecode - convolutional --- # ShallowFBCSPNet Shallow ConvNet model from Schirrmeister et al (2017) [Schirrmeister2017]. > **Architecture-only repository.** Documents the > `braindecode.models.ShallowFBCSPNet` class. **No pretrained weights are > distributed here.** Instantiate the model and train it on your own > data. ## Quick start ```bash pip install braindecode ``` ```python from braindecode.models import ShallowFBCSPNet model = ShallowFBCSPNet( 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: - Interactive browser (live instantiation, parameter counts): - Source on GitHub: ## Architecture ![ShallowFBCSPNet architecture](https://onlinelibrary.wiley.com/cms/asset/221ea375-6701-40d3-ab3f-e411aad62d9e/hbm23730-fig-0002-m.jpg) ## Parameters | Parameter | Type | Description | |---|---|---| | `n_filters_time: int` | — | Number of temporal filters. | | `filter_time_length: int` | — | Length of the temporal filter. | | `n_filters_spat: int` | — | Number of spatial filters. | | `pool_time_length: int` | — | Length of temporal pooling filter. | | `pool_time_stride: int` | — | Length of stride between temporal pooling filters. | | `final_conv_length: int | str` | — | Length of the final convolution layer. If set to "auto", length of the input signal must be specified. | | `conv_nonlin: type[nn.Module] | Callable` | — | Non-linear module class to be used after convolution layers. For backward compatibility, callables are also accepted and wrapped with :class:`~braindecode.modules.Expression`. | | `pool_mode: str` | — | Method to use on pooling layers. "max" or "mean". | | `activation_pool_nonlin: type[nn.Module]` | — | Non-linear module class to be used after pooling layers. | | `split_first_layer: bool` | — | Split first layer into temporal and spatial layers (True) or just use temporal (False). There would be no non-linearity between the split layers. | | `batch_norm: bool` | — | Whether to use batch normalisation. | | `batch_norm_alpha: float` | — | Momentum for BatchNorm2d. | | `drop_prob: float` | — | Dropout probability. | ## References 1. Schirrmeister, R. T., Springenberg, J. T., Fiederer, L. D. J., Glasstetter, M., Eggensperger, K., Tangermann, M., Hutter, F. & Ball, T. (2017). Deep learning with convolutional neural networks for EEG decoding and visualization. Human Brain Mapping , Aug. 2017. Online: http://dx.doi.org/10.1002/hbm.23730 ## Citation Cite the original architecture paper (see *References* above) and braindecode: ```bibtex @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.