CVGRLGDec 20, 2023

MoSAR: Monocular Semi-Supervised Model for Avatar Reconstruction using Differentiable Shading

arXiv:2312.13091v218 citationsh-index: 15CVPR
Originality Highly original
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This addresses the challenge of creating relightable avatars from single images for multimedia applications, offering improved generalization over existing methods.

The paper tackles the ill-posed problem of reconstructing avatars from monocular images by introducing MoSAR, a semi-supervised method that uses a differentiable shading formulation to learn from both controlled and in-the-wild datasets, resulting in more realistic avatars and richer skin reflectance maps than state-of-the-art methods.

Reconstructing an avatar from a portrait image has many applications in multimedia, but remains a challenging research problem. Extracting reflectance maps and geometry from one image is ill-posed: recovering geometry is a one-to-many mapping problem and reflectance and light are difficult to disentangle. Accurate geometry and reflectance can be captured under the controlled conditions of a light stage, but it is costly to acquire large datasets in this fashion. Moreover, training solely with this type of data leads to poor generalization with in-the-wild images. This motivates the introduction of MoSAR, a method for 3D avatar generation from monocular images. We propose a semi-supervised training scheme that improves generalization by learning from both light stage and in-the-wild datasets. This is achieved using a novel differentiable shading formulation. We show that our approach effectively disentangles the intrinsic face parameters, producing relightable avatars. As a result, MoSAR estimates a richer set of skin reflectance maps, and generates more realistic avatars than existing state-of-the-art methods. We also introduce a new dataset, named FFHQ-UV-Intrinsics, the first public dataset providing intrinsic face attributes at scale (diffuse, specular, ambient occlusion and translucency maps) for a total of 10k subjects. The project website and the dataset are available on the following link: https://ubisoft-laforge.github.io/character/mosar/

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