spyrit.core.recon.FullNet.reconstruct
- FullNet.reconstruct(y)[source]
Apply the reconstruction modules to the input measurements.
The signal is reconstructed using the reconstruction modules stored in the network under the key recon_modules. They are all successively applied to the input tensor y.
- Args:
y (torch.tensor): Input measurement tensor. It usually has measurements in the last dimension.
- Returns:
torch.tensor: Output tensor. Its shape depends on the output of the reconstruction modules.
- Example:
>>> acqu1 = nn.Linear(10,5) >>> acqu2 = nn.Sigmoid() >>> acqu = nn.Sequential(acqu1, acqu2) >>> recon1 = nn.Linear(2,5) >>> recon = nn.Sequential(recon1) >>> net = FullNet(acqu, recon) >>> y = torch.ones(10, 2) >>> z = net.reconstruct(y) >>> print(z.shape) torch.Size([10, 5]) >>> print(z) tensor([[...], [...], [...], [...], [...], [...], [...], [...], [...], [...