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76,5% Accuracy on LFW about facenet HOT 4 CLOSED

davidsandberg avatar davidsandberg commented on May 1, 2024
76,5% Accuracy on LFW

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Comments (4)

 avatar commented on May 1, 2024

training dataset and testing dataset should use same face alignment so LFW dataset and training dataset should use same face alignment and I reproduce the same accurary as the author did

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Jusya avatar Jusya commented on May 1, 2024

I understand that) I thought, that the pre-trained model "model-20160506.ckpt-500000" which I use should give 0.919+-0.008 accuracy on LFW as it was mentioned in Performance in README file. However, I got 76,5% accuracy.
If pre-trained model was trained on a combination of FaceScrub and CASIA-Webface what should I do with LFW to get high accuracy? Should I download another dataset to check performance, or should I somehow change (e.g. change face alignment) LFW dataset that I've downloaded by myself or with function that is already written in this FaceNet implementation?

Thank you for answering me)

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davidsandberg avatar davidsandberg commented on May 1, 2024

Yes, you need to align the images in the LFW dataset as well.
On the wiki there's a description of which LFW files to donwload and how to run the alignment and evaluation.
A tricky thing is that dlib does not manage to find faces in all the images, so for those images the deep funneled version of the LFW dataset is used. But it's all described on the wiki.

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Jusya avatar Jusya commented on May 1, 2024

Thank you for you help! I will go through the wiki tutorial you've provided)

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