Third party Pytorch implement of Image Processing Transformer (Pre-Trained Image Processing Transformer arXiv:2012.00364v2)

Overview

ImageProcessingTransformer

Third party Pytorch implement of Image Processing Transformer (Pre-Trained Image Processing Transformer arXiv:2012.00364v2)

The latest version contains some important modifications according to the official mindspore implementation. It makes convergecy a lot faster. Please make sure you update to the latest version.

only contain model definition file and train/test file. Dataloader file is not yet released. You could implement your own dataloader. It may be released in the next version.

To pretrain on random task

python main.py --seed 0 \
--lr 5e-5 \
--save-path "./ckpt" \
--epochs 300 \
--data path-to-data \
--batch-size 256

To finetune on a specific task

python main.py --seed 0 \
--lr 2e-5 \
--save-path "./ckpt" \
--epochs 30 \
--reset-epoch \
--data path-to-data \
--batch-size 256 \
--resume path-to-pretrain-model \
--task "dehaze"

To eval on a specific task

python main.py --seed 0 \
--eval-data path-to-val-data \
--batch-size 256 \
--eval \
--resume path-to-model \
--task "dehaze"
Owner
School of Electronic and Information Engineering, Department of Electronic Information Engineering, Liaoning Technical University,CN (CCF,CGS)Student Member
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