UnsupAdversarialDiscriminatorLoss#
- class deepinv.loss.adversarial.UnsupAdversarialDiscriminatorLoss(weight_adv=1.0, D=None, device='cpu')[source]#
Bases:
DiscriminatorLoss
Unsupervised adversarial consistency loss for discriminator.
This loss was used in unsupervised generative models such as Bora et al., “AmbientGAN: Generative models from lossy measurements”.
Constructs adversarial loss between input measurement and re-measured reconstruction, to be maximised by discriminator.
\(\mathcal{L}_\text{adv}(y,\hat y;D)=\mathbb{E}_{y\sim p_y}\left[q(D(y))\right]+\mathbb{E}_{\hat y\sim p_{\hat y}}\left[q(1-D(\hat y))\right]\)
See Imaging inverse problems with adversarial networks for examples of training generator and discriminator models.
- Parameters:
weight_adv (float) – weight for adversarial loss, defaults to 1.0
D (torch.nn.Module) – discriminator network. If not specified, D must be provided in forward(), defaults to None.
device (str) – torch device, defaults to “cpu”
- forward(y, y_hat, D=None, **kwargs)[source]#
Forward pass for unsupervised adversarial discriminator loss.
- Parameters:
y (torch.Tensor) – input measurement
y_hat (torch.Tensor) – re-measured reconstruction
D (torch.nn.Module) – discriminator model. If None, then D passed from __init__ used. Defaults to None.
Examples using UnsupAdversarialDiscriminatorLoss
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Imaging inverse problems with adversarial networks