Perform data augmentation in training and normalize correctly at test… #9
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Working with the code I noticed that data augmentation (i.e. random crop and random flip) was not performed, and that in
val.ipynb
data normalisation at test time was not working correctly. With these changes I was able to performMAE: 11.12
on ShanghaiTech Part B, not far from what reported in the paper.