-
Notifications
You must be signed in to change notification settings - Fork 128
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
Hi how to train your code with different pre-trained models #43
Comments
Hi, to use another backbone.
self.base = resnet50(pretrained=True, last_conv_stride=last_conv_stride) with self.base = resnext50(pretrained=True) If you would like to reduce the last convolutional stride of the backbone, you can modify it yourself in |
Thank you very much for your clear explanation.
I want to check with different networks like Efficient net, Inception.
Where do I get pretrained weight for these networks.
Can you suggest which pretrained network is preferred for reidentification.
Thank you.
…On Wed, 3 Mar 2021, 1:34 am Houjing Huang, ***@***.***> wrote:
Hi, to use another backbone.
- First, you create another file, e.g. resnext.py under directory
tri_loss/model. The content is the original resnext.py provided by
pytorch.
- Then, modify the forward function of resnext, removing unnecessary
operation after this line x = self.layer4(x), so that it returns the
result of layer4.
- Finally, you can use from .resnext import resnext50 in
tri_loss/model/Model.py, and then replace this line
self.base = resnet50(pretrained=True, last_conv_stride=last_conv_stride)
with
self.base = resnext50(pretrained=True)
If you would like to reduce the last convolutional stride of the backbone,
you can modify it yourself in resnext.py accordingly.
—
You are receiving this because you authored the thread.
Reply to this email directly, view it on GitHub
<#43 (comment)>,
or unsubscribe
<https://github.com/notifications/unsubscribe-auth/AOOYJBPSEOJLQ5H5234LWQLTBVAEZANCNFSM4YOF3KGQ>
.
|
Can I get anystrong literature to choose best pre-trained model for people
reidentification. Kindly suggest
Thank you.
On Wed, 3 Mar 2021, 6:49 am Shavantrevva Bilakeri, <[email protected]>
wrote:
… Thank you very much for your clear explanation.
I want to check with different networks like Efficient net, Inception.
Where do I get pretrained weight for these networks.
Can you suggest which pretrained network is preferred for reidentification.
Thank you.
On Wed, 3 Mar 2021, 1:34 am Houjing Huang, ***@***.***>
wrote:
> Hi, to use another backbone.
>
> - First, you create another file, e.g. resnext.py under directory
> tri_loss/model. The content is the original resnext.py provided by
> pytorch.
> - Then, modify the forward function of resnext, removing unnecessary
> operation after this line x = self.layer4(x), so that it returns the
> result of layer4.
> - Finally, you can use from .resnext import resnext50 in
> tri_loss/model/Model.py, and then replace this line
>
> self.base = resnet50(pretrained=True, last_conv_stride=last_conv_stride)
>
> with
>
> self.base = resnext50(pretrained=True)
>
> If you would like to reduce the last convolutional stride of the
> backbone, you can modify it yourself in resnext.py accordingly.
>
> —
> You are receiving this because you authored the thread.
> Reply to this email directly, view it on GitHub
> <#43 (comment)>,
> or unsubscribe
> <https://github.com/notifications/unsubscribe-auth/AOOYJBPSEOJLQ5H5234LWQLTBVAEZANCNFSM4YOF3KGQ>
> .
>
|
Sorry for the late response. If you want to try on many different backbones or understand which one is better, as well as some training tricks, you can read the paper FastReID: A Pytorch Toolbox for General Instance Re-identification and the accompanying code https://github.com/JDAI-CV/fast-reid. |
How to train with different pre-trained models.
please reply.
The text was updated successfully, but these errors were encountered: