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

Question about your data file #2

Open
Noahsark opened this issue Mar 25, 2018 · 2 comments
Open

Question about your data file #2

Noahsark opened this issue Mar 25, 2018 · 2 comments

Comments

@Noahsark
Copy link

Dear Rakshith,

May I ask the exact format of your file "resnet150_2048-mean.npy"?

  1. Does it have to be in same order with the items in your "labels.txt" file and "fasterRcnn_clasDetFEat80.npy"?

  2. By running the scripts under https://github.com/akirafukui/vqa-mcb/tree/master/preprocess , it extract feature in 2048x14x14 dims. Did you then calculate the mean value of each 14x14 block? Is this the content in file "resnet150_2048-mean.npy" ?

Thank you so much.
Best Regards,
Li

@Noahsark
Copy link
Author

Additionally, may I ask how to pre-train the generator before the adversarial training in your code?

@KentHwang1
Copy link

Dear Rakshith,

May I ask the exact format of your file "resnet150_2048-mean.npy"?

  1. Does it have to be in same order with the items in your "labels.txt" file and "fasterRcnn_clasDetFEat80.npy"?
  2. By running the scripts under https://github.com/akirafukui/vqa-mcb/tree/master/preprocess , it extract feature in 2048x14x14 dims. Did you then calculate the mean value of each 14x14 block? Is this the content in file "resnet150_2048-mean.npy" ?

Thank you so much.
Best Regards,
Li

Hello,I don't make it to exact the file resnet150_2048-mean.npy,could you please upload the file if it's still exists.Thank you a lot and look forward for your reply.

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

2 participants