BareSkinNet: De-makeup and De-lighting via 3D Face Reconstruction
- URL: http://arxiv.org/abs/2209.09029v1
- Date: Mon, 19 Sep 2022 14:02:03 GMT
- Title: BareSkinNet: De-makeup and De-lighting via 3D Face Reconstruction
- Authors: Xingchao Yang and Takafumi Taketomi
- Abstract summary: We propose BareSkinNet, a novel method that simultaneously removes makeup and lighting influences from the face image.
By combining the process of 3D face reconstruction, we can easily obtain 3D geometry and coarse 3D textures.
In experiments, we show that BareSkinNet outperforms state-of-the-art makeup removal methods.
- Score: 2.741266294612776
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose BareSkinNet, a novel method that simultaneously removes makeup and
lighting influences from the face image. Our method leverages a 3D morphable
model and does not require a reference clean face image or a specified light
condition. By combining the process of 3D face reconstruction, we can easily
obtain 3D geometry and coarse 3D textures. Using this information, we can infer
normalized 3D face texture maps (diffuse, normal, roughness, and specular) by
an image-translation network. Consequently, reconstructed 3D face textures
without undesirable information will significantly benefit subsequent
processes, such as re-lighting or re-makeup. In experiments, we show that
BareSkinNet outperforms state-of-the-art makeup removal methods. In addition,
our method is remarkably helpful in removing makeup to generate consistent
high-fidelity texture maps, which makes it extendable to many realistic face
generation applications. It can also automatically build graphic assets of face
makeup images before and after with corresponding 3D data. This will assist
artists in accelerating their work, such as 3D makeup avatar creation.
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