Learning Monocular Face Reconstruction using Multi-View Supervision

2020 15th IEEE International Conference on Automatic Face and Gesture Recognition (FG 2020)(2020)

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摘要
We present a method to reconstruct faces from a single portrait image. While traditional face reconstruction methods fit low-dimensional 3D morphable models to images, we train a deep network to regress depth from a single image directly. We do so by combining supervised losses on synthetic data with indirect supervision on real data using a novel multi-view photo-consistency loss. Furthermore, we regularize the depth estimation using a 3D morphable model (3DMM). We demonstrate that this leads to results that preserve facial features, capture facial geometry that goes beyond 3DMMs, and is also robust to viewpoint conditions. We evaluate our method on various datasets and via ablation studies, and demonstrate that it outperforms previous work significantly.
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关键词
3DMM,facial features,capture facial geometry,monocular face reconstruction,multiview supervision,single portrait image,traditional face reconstruction methods,3D morphable model,deep network,single image,supervised losses,synthetic data,indirect supervision,novel multiview photo-consistency loss,depth estimation
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