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Papers/Fake It Till You Make It: Face analysis in the wild using ...

Fake It Till You Make It: Face analysis in the wild using synthetic data alone

Erroll Wood, Tadas BaltruĊĦaitis, Charlie Hewitt, Sebastian Dziadzio, Matthew Johnson, Virginia Estellers, Thomas J. Cashman, Jamie Shotton

2021-09-30ICCV 2021 10Face AlignmentFace ParsingFace ModelDomain Adaptation
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Abstract

We demonstrate that it is possible to perform face-related computer vision in the wild using synthetic data alone. The community has long enjoyed the benefits of synthesizing training data with graphics, but the domain gap between real and synthetic data has remained a problem, especially for human faces. Researchers have tried to bridge this gap with data mixing, domain adaptation, and domain-adversarial training, but we show that it is possible to synthesize data with minimal domain gap, so that models trained on synthetic data generalize to real in-the-wild datasets. We describe how to combine a procedurally-generated parametric 3D face model with a comprehensive library of hand-crafted assets to render training images with unprecedented realism and diversity. We train machine learning systems for face-related tasks such as landmark localization and face parsing, showing that synthetic data can both match real data in accuracy as well as open up new approaches where manual labelling would be impossible.

Results

TaskDatasetMetricValueModel
Facial Recognition and Modelling300WNME_inter-ocular (%, Challenge)4.86FakeIt
Facial Recognition and Modelling300WNME_inter-ocular (%, Common)3.09FakeIt
Scene ParsingHelenMean F192UNet (synthetic)
Scene ParsingHelenMean F191.6UNet (real)
Scene ParsingLaPaMean F190.9UNet (real)
Scene ParsingLaPaMean F190.1UNet (synthetic)
Face Reconstruction300WNME_inter-ocular (%, Challenge)4.86FakeIt
Face Reconstruction300WNME_inter-ocular (%, Common)3.09FakeIt
3D300WNME_inter-ocular (%, Challenge)4.86FakeIt
3D300WNME_inter-ocular (%, Common)3.09FakeIt
3D Face Modelling300WNME_inter-ocular (%, Challenge)4.86FakeIt
3D Face Modelling300WNME_inter-ocular (%, Common)3.09FakeIt
3D Face Reconstruction300WNME_inter-ocular (%, Challenge)4.86FakeIt
3D Face Reconstruction300WNME_inter-ocular (%, Common)3.09FakeIt
2D Semantic SegmentationHelenMean F192UNet (synthetic)
2D Semantic SegmentationHelenMean F191.6UNet (real)
2D Semantic SegmentationLaPaMean F190.9UNet (real)
2D Semantic SegmentationLaPaMean F190.1UNet (synthetic)

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