Some questions about class module and train
wangqiim opened this issue · 2 comments
Thanks, it is a interesting work. I have some questions to ask. Looking forward to your answer.
(1) You propose the Average-Loss and Class-Loss to train class module, It seems the class module will be trained to output the class result simple:medium:hard with 1:1:1. But in your paper, it is not.
(2) After trained the Class Module independently, why train Class & SR Module jointly? I think maybe the pre-trained SR Module has been the best?
(3) how many 2080Ti GPUS need to train(and total memory)? About how long it takes to train?
Thanks for your attention.
(1) The class results depend on training data and test data. A sub-image is assigned to “simple” which means that the sub-image is similar to one-third of the simpler sub-images among training data. If test data contains more "simple" sub-images, the simple class results would be more than others.
(2) You can try it yourself~ Actually, the performance is still increasing while FLOPs is decreasing during joint training.
(3) For ClassSR-FSRCNN, two 2080Ti GPUs and about 3 days are enough.
Many operations do not need to strictly follow the paper, but can be modified according to different situations. (e.g. the rate of average-loss is also can be 25% : 25% : 50%)
make sense. Thank you very much!