GRCVMay 28, 2025

Neural Face Skinning for Mesh-agnostic Facial Expression Cloning

arXiv:2505.22416v12 citationsh-index: 7Computer graphics forum (Print)
Originality Incremental advance
AI Analysis

This addresses a key problem in facial animation retargeting for applications like gaming and film, offering incremental improvements in local detail and control.

The paper tackles the challenge of accurately retargeting facial expressions to diverse face meshes while enabling intuitive control, proposing a method that combines global and local deformation models to improve expression fidelity and adaptability across meshes, with experiments showing improved performance over state-of-the-art methods.

Accurately retargeting facial expressions to a face mesh while enabling manipulation is a key challenge in facial animation retargeting. Recent deep-learning methods address this by encoding facial expressions into a global latent code, but they often fail to capture fine-grained details in local regions. While some methods improve local accuracy by transferring deformations locally, this often complicates overall control of the facial expression. To address this, we propose a method that combines the strengths of both global and local deformation models. Our approach enables intuitive control and detailed expression cloning across diverse face meshes, regardless of their underlying structures. The core idea is to localize the influence of the global latent code on the target mesh. Our model learns to predict skinning weights for each vertex of the target face mesh through indirect supervision from predefined segmentation labels. These predicted weights localize the global latent code, enabling precise and region-specific deformations even for meshes with unseen shapes. We supervise the latent code using Facial Action Coding System (FACS)-based blendshapes to ensure interpretability and allow straightforward editing of the generated animation. Through extensive experiments, we demonstrate improved performance over state-of-the-art methods in terms of expression fidelity, deformation transfer accuracy, and adaptability across diverse mesh structures.

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