LeGO: Leveraging a Surface Deformation Network for Animatable Stylized Face Generation with One Example
- URL: http://arxiv.org/abs/2403.15227v1
- Date: Fri, 22 Mar 2024 14:20:54 GMT
- Title: LeGO: Leveraging a Surface Deformation Network for Animatable Stylized Face Generation with One Example
- Authors: Soyeon Yoon, Kwan Yun, Kwanggyoon Seo, Sihun Cha, Jung Eun Yoo, Junyong Noh,
- Abstract summary: We propose a method that can produce a highly stylized 3D face model with desired topology.
Our methods train a surface deformation network with 3DMM and translate its domain to the target style using a differentiable meshes and directional CLIP losses.
The network achieves stylization of the 3D face mesh by mimicking the style of the target using a differentiable meshes and directional CLIP losses.
- Score: 5.999050119438177
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Recent advances in 3D face stylization have made significant strides in few to zero-shot settings. However, the degree of stylization achieved by existing methods is often not sufficient for practical applications because they are mostly based on statistical 3D Morphable Models (3DMM) with limited variations. To this end, we propose a method that can produce a highly stylized 3D face model with desired topology. Our methods train a surface deformation network with 3DMM and translate its domain to the target style using a paired exemplar. The network achieves stylization of the 3D face mesh by mimicking the style of the target using a differentiable renderer and directional CLIP losses. Additionally, during the inference process, we utilize a Mesh Agnostic Encoder (MAGE) that takes deformation target, a mesh of diverse topologies as input to the stylization process and encodes its shape into our latent space. The resulting stylized face model can be animated by commonly used 3DMM blend shapes. A set of quantitative and qualitative evaluations demonstrate that our method can produce highly stylized face meshes according to a given style and output them in a desired topology. We also demonstrate example applications of our method including image-based stylized avatar generation, linear interpolation of geometric styles, and facial animation of stylized avatars.
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