Comments (8)
I solved it by using T.InterpolationMode.BICUBIC
instead of Image.BICUBIC
in my project.
T.Resize((224, 224), T.InterpolationMode.BICUBIC)
Note that in my project, not in PyTorch-CycleGAN.
from pytorch-cyclegan.
@akshat-kulsh It's a long time ago, so I can't remember, but it's probably code like this:
import torchvision.transforms as T
from pytorch-cyclegan.
One thing to note is that T.InterpolationMode.* seem to be equal to Image.*. So we may ignore this warning safely (at least for now).
from pytorch-cyclegan.
I believe you can also omit the InterpolationMode, and just have the
T.Resize((224, 224))
It will automatically use the InterpolationMode.BILINEAR
from pytorch-cyclegan.
Guess this problem is caused by Pillow 7.0: pytorch/vision#1846
Does change the Pillow version help?
from pytorch-cyclegan.
@Mukosame I have the same issue. Going to Pillow 6.2.1 did not help as referenced in that link.
from pytorch-cyclegan.
I solved it by using
T.InterpolationMode.BICUBIC
instead ofImage.BICUBIC
in my project.T.Resize((224, 224), T.InterpolationMode.BICUBIC)
can you let me know what T is in your code?
from pytorch-cyclegan.
@akshat-kulsh It's a long time ago, so I can't remember, but it's probably code like this:
import torchvision.transforms as T
Yes, excellent - that worked for me.
from pytorch-cyclegan.
Related Issues (20)
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from pytorch-cyclegan.