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Performance on GOT-10k #93

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qkdkralsgh opened this issue Oct 16, 2023 · 4 comments
Open

Performance on GOT-10k #93

qkdkralsgh opened this issue Oct 16, 2023 · 4 comments

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@qkdkralsgh
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Hello, first of all thank you for the good work.

I have one question: Is the performance of the MixViT_L model on the got10k dataset the performance learned on the full dataset? (AO : 75.7%)

@yutaocui
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Hi, the MixViT-L model, which obtains the AO of 75.7% on got10k-test, is trained only on the got10 dataset.

@qkdkralsgh
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Thank you for answer. Is the backbone a convmae large model?

@yutaocui
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Hi, the MixViT-L model, which obtains the AO of 75.7% on got10k-test, is trained only on the got10 dataset.

This model employs ViT-L as backbone. (the MixViT_L(ConvMAE) uses convmae backbone.)

@NoorTahir521
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The model was trained on GOT 10k full the AO comes to be 57% with lower IOU what can be the reason? it is different than the paper?

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