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About the re-implemented model of YoutubeHand #14

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EAST-J opened this issue Dec 11, 2021 · 5 comments
Closed

About the re-implemented model of YoutubeHand #14

EAST-J opened this issue Dec 11, 2021 · 5 comments

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@EAST-J
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EAST-J commented Dec 11, 2021

Hi Xingyu, Thanks for your great work. I see in the Experiment part of the paper, you use YouTubeHand as the baseline. I wonder would you release this part of code and model?

@SeanChenxy
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Hi, I have re-implement YoutubeHand (https://github.com/SeanChenxy/HandMesh/blob/main/cmr/ytbhand.py). But I have not re-train it. You could use it according to your needs.

@yuyu19970716
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Hello, I can't find the ytbhand.py file in the code, can you provide it?

@EAST-J
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EAST-J commented Aug 2, 2022

Hello, I can't find the ytbhand.py file in the code, can you provide it?

You can find in cmr/models/ytbhand.py

@yuyu19970716
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Oh I found it! Thank you so much, this question is so sloppy!

@yuyu19970716
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Hello, I have another question to ask. This question may also be rather silly. I want to correspond the model code of DenseStack_Backnone with the paper, but I feel that I am looking at it in a mess. May I ask where the 2d encoder-decoder architecture and cascade are reflected in the model? At the same time, is the final generated latent Fe? Is uv-reg Lp? So sorry,I'm new to this direction.
Looking forward to your reply! Thanks in advance!

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3 participants