spyrit.core.meas.Linear.forward
- Linear.forward(x: tensor) tensor[source]
Applies linear transform to incoming images: \(y = Hx\).
This is equivalent to computing \(x \cdot H^T\).
- Args:
\(x\) (torch.tensor): Batch of vectorized (flattened) images. If x has more than 1 dimension, the linear measurement is applied to each image in the batch.
- Shape:
\(x\): \((*, N)\) where * denotes the batch size and N the total number of pixels in the image.
Output: \((*, M)\) where * denotes the batch size and M the number of measurements.
- Example:
>>> H = torch.randn([400, 1600]) >>> meas_op = Linear(H) >>> x = torch.randn([10, 1600]) >>> y = meas_op(x) >>> print(y.shape) torch.Size([10, 400])