Comments (2)
Hi, the size in our paper is 960x540, which is the same as the GOPRO version used by IFIRNN.
The computational cost of each model is calculated for size of 1280x720.
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okay, thank you very much.
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Related Issues (20)
- Collab HOT 4
- GoPro pretrained model HOT 1
- Something about the test HOT 5
- about dataset HOT 3
- About pretrained model HOT 3
- About training time of BSD dataset HOT 2
- How to use with custom input ?? HOT 2
- NotImplementedError: There were no tensor arguments to this function HOT 6
- Are these artifacts expected? HOT 4
- Training problems HOT 2
- About training HOT 1
- Cannot download BSD dataset HOT 2
- Using pre-trained model to inference , the results is strange HOT 6
- About dataset HOT 1
- Difference of GMACs HOT 1
- Cannot download BSD HOT 8
- Issue on downloading BSD database HOT 4
- CPU HOT 2
- About Dataset HOT 1
- When i want to train in my own dataset to deblur, the value of loss run into nan HOT 1
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