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Cannot reproduce the recognition accuracy of certain expressions in the paper #8

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AMG024 opened this issue Apr 26, 2021 · 8 comments

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@AMG024
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AMG024 commented Apr 26, 2021

I used the msceleb weights pre-training model parameters in the paper to train the model’s accuracy on a certain expression that is not as accurate as the recognition accuracy in the confusion matrix in the paper. The parameters used are the default parameters in the paper, so I want to know how In order to reproduce the recognition accuracy of each expression in the confusion matrix of the paper

@nothingeasy
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I meet the same problem . Does anyone reproduce the result in the paper?

@lv-0413
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lv-0413 commented May 11, 2021

I also meet the same problem . Is my data set error? I use RAF-DB data set to train, only get the accuracy of 86.44%.

@nothingeasy
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Anyone try this code? How about the resulut? Please help~

@yun-kai
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yun-kai commented Jun 10, 2021

I use RAF-DB data set to train and get the accuracy of 86.25%, and use AffectNet data set to train and get the accuracy of 56.8%.
I don't know why the accuracy of AffectNet is too far from the paper result. Does anyone meet same problem?

@hhwwxx11
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Now the ms-celeb weight pre-training model cannot be downloaded, can you share it?

@lbbbbbbbbbb
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请问你有了么,链接还是失效

@ZechengLi19
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Now the ms-celeb weight pre-training model cannot be downloaded, can you share it?

Same question!

@ZechengLi19
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请问你有了么,链接还是失效

you can check this link https://github.com/zyh-uaiaaaa/relative-uncertainty-learning

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7 participants