Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Low AUC in FF-DF #9

Open
WeinanGuan opened this issue Aug 19, 2022 · 3 comments
Open

Low AUC in FF-DF #9

WeinanGuan opened this issue Aug 19, 2022 · 3 comments

Comments

@WeinanGuan
Copy link

Hi! I re-train a new PCL model by following your codes. The training data is only I2G data. However, the AUC of FF-DF is only 0.5. It seems like that the trained model has no ability of generalization. I have checked the log file, which shows that loss_D is 1.1+ and acc_D is 1.0 in the training phase, but loss_D and acc_D in the validation phase are 17+ and 0.5, respectively. I have no idea about the reason of that. Would you like to give me some suggestions about this problem? Maybe the generated I2G data or some possible errors? And would you like to provide your trained weight of PCL? My email is [email protected]. Thanks you a lot~

@jtchen0528
Copy link
Owner

Hi,

I didn't get the result shown in the original paper yet by only using I2G images. The original paper did not release their code on generating the I2G images. There must be some features they've kept or some error in my I2G code. This was stated in some previous issues.
Some rather good results are achieved by mixing I2G fake images, "real fake" images (fake data in FF), and real images.

I haven't got time to maintain this project recently. Please feel free to make a pull request or colaborate if you make some breakthrough.

@WeinanGuan
Copy link
Author

Got it! Thanks for your response~
I will try to mix FF and I2G data for a new training process~

@CJL0114
Copy link

CJL0114 commented Jan 5, 2024

知道了!谢谢你的回复~ 我会尝试混合FF和I2G数据进行新的训练过程~

请问如何对FF数据进行新的训练过程。

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
None yet
Projects
None yet
Development

No branches or pull requests

3 participants