I'm trying to make a "custom" convolutional layer in `Theano`

, where instead of linear filters convoluted with an image, I'm applying sup- or inf- convolutions (essentially dilations and erosions). How would I go in writing such a convolution in an efficient way?

Given a tensor `X`

intended to contain a set of vectors as inputs, its dilation with a filter `W`

can be written as

```
dil, _ = theano.scan(fn = lambda x: T.max(W + x), sequences=[X])
```

The problem is that I don't know how to properly apply this operation to subregions of an image taking into account padding, tensor slicing etc. for filters of arbitrary size. I also read in the documentation that using `scan`

to implement convolutions is pretty inefficient. Any idea on how to do this?