FBCCNN¶
- class torcheeg.models.FBCCNN(in_channels: int = 4, grid_size: Tuple[int, int] = (9, 9), num_classes: int = 2)[source][source]¶
Frequency Band Correlation Convolutional Neural Network (FBCCNN). For more details, please refer to the following information.
Paper: Pan B, Zheng W. Emotion Recognition Based on EEG Using Generative Adversarial Nets and Convolutional Neural Network[J]. Computational and Mathematical Methods in Medicine, 2021.
Below is a recommended suite for use in emotion recognition tasks:
dataset = DEAPDataset(io_path=f'./deap', root_path='./data_preprocessed_python', online_transform=transforms.Compose([ transforms.BandPowerSpectralDensity(), transforms.ToGrid(DEAP_CHANNEL_LOCATION_DICT) ]), label_transform=transforms.Compose([ transforms.Select('valence'), transforms.Binary(5.0), ])) model = FBCCNN(num_classes=2, in_channels=4, grid_size=(9, 9))
- Parameters:
in_channels (int) – The feature dimension of each electrode, i.e., \(N\) in the paper. (default:
4)grid_size (tuple) – Spatial dimensions of grid-like EEG representation. (default:
(9, 9))num_classes (int) – The number of classes to predict. (default:
2)
- forward(x: Tensor) Tensor[source][source]¶
- Parameters:
x (torch.Tensor) – EEG signal representation, the ideal input shape is
[n, 4, 9, 9]. Here,ncorresponds to the batch size,4corresponds toin_channels, and(9, 9)corresponds togrid_size.- Returns:
the predicted probability that the samples belong to the classes.
- Return type:
torch.Tensor[number of sample, number of classes]