Comments (1)
Hi @elientumba2019,
Thank you for your question. You can resize these images before feeding them into your network and then resize them back to get the original size. Of course, you may think of applying minimal resizing to match the requirement of your network to avoid losing much information before processing.
In the paper, we use patches for training/validation. For testing, we use the bilateral guided upsampling to apply the enhancement to a resized version of the image then transfer it to the full-size image.
I hope this helps!
from exposure_correction.
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from exposure_correction.