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Can ML-images datasets perform multiple output detection? #47

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Easyfeng222 opened this issue Mar 1, 2019 · 2 comments
Open

Can ML-images datasets perform multiple output detection? #47

Easyfeng222 opened this issue Mar 1, 2019 · 2 comments

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@Easyfeng222
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Thanks for your contribution, I read your paper and said that the verification result is in a single-label dataset. Can the ML-images dataset be multi-output tested? Is it convenient to open source if there is one?

@wubaoyuan
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@Easyfeng222 Constructing a clean-annotated, large-size, same-distribution-with-training multi-labeled validation set is very very costly. We are trying to enlarge the current validation set. Please refer to Sc 4.2 for a brief illustration. We believe that the transfer learning to single-label dataset can also validate the quality of the ML-Images.

@Easyfeng222
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@wubaoyuan Thank you for your quick reply.the first ckpt is pre-trained with the ML-Images dictionary. Can you add a demo to use this ckpt as Single label classification.I am very interested in the demo effect of ML-images.Looking forward to your reply

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