Comments (5)
Thanks for the mentioned issue.
This training code is the code of BRF variant which is mentioned in the homepage (0.1 PSNR improvements but with much lower params and faster inference speed). I confused the codes of both of them. I will fix the bug soon. The two-stage training can be easily achieved via modifying the config (change the QE network).
Thank you!
from rfda-pytorch.
I have uploaded the new training code, see train_rfda_ft.py, and check the differences in line 424.
from rfda-pytorch.
Hi thank you, could you please also upload the code for the RTVQE module that is used in train_rfda_ft and confirm whether the currently uploaded config file should be used for training with this script?
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Done.
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Thank you!
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Related Issues (7)
- TRAINING CODE HOT 4
- 关于brf的问题 HOT 13
- 关于消融实验的问题 HOT 6
- 关于率失真曲线的问题 HOT 2
- bash build.sh is not workinh HOT 3
- How to achieve the two-stage training strategy? HOT 2
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