Meta Face Recognition (MFR) is a meta-learning face recognition method. MFR synthesizes the source/target domain shift with a meta-optimization objective, which requires the model to learn effective representations not only on synthesized source domains but also on synthesized target domains. Specifically, domain-shift batches are built through a domain-level sampling strategy and back-propagated gradients/meta-gradients are obtained on synthesized source/target domains by optimizing multi-domain distributions. The gradients and meta-gradients are further combined to update the model to improve generalization.
Source: Learning Meta Face Recognition in Unseen DomainsPaper | Code | Results | Date | Stars |
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Task | Papers | Share |
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Face Recognition | 10 | 45.45% |
Survey | 1 | 4.55% |
Image Super-Resolution | 1 | 4.55% |
Super-Resolution | 1 | 4.55% |
Dataset Generation | 1 | 4.55% |
Change Detection | 1 | 4.55% |
Change Point Detection | 1 | 4.55% |
TAR | 1 | 4.55% |
Translation | 1 | 4.55% |
Component | Type |
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🤖 No Components Found | You can add them if they exist; e.g. Mask R-CNN uses RoIAlign |