In the FCN paper, the authors discuss the patch wise training and fully convolutional training. What is the difference between these two?
Please refer to
section 4.4 attached in the following.
It seems to me that the training mechanism is as follows,
Assume the original image is
M*M, then iterate the
M*M pixels to extract
N*N patch (where
N<M). The iteration stride can some number like
N/3 to generate overlapping patches. Moreover, assume each single image corresponds to 20 patches, then we can put these
20 patches or
60 patches(if we want to have 3 images) into a single mini-batch for training. Is this understanding right? It seems to me that this so-called fully convolutional training is the same as patch-wise training.