ImFace++: A Sophisticated Nonlinear 3D Morphable Face Model with Implicit Neural Representations
Mingwu Zheng, Haiyu Zhang, Hongyu Yang, Liming Chen, Di Huang

TL;DR
ImFace++ introduces a continuous, nonlinear 3D face model using implicit neural representations, enabling detailed, accurate face reconstructions and better correspondence across diverse facial shapes.
Contribution
The paper proposes a novel 3D morphable face model with explicit disentanglement, a refinement field, and a Neural Blend-Field, advancing face representation fidelity and correspondence accuracy.
Findings
Significantly improves face reconstruction quality.
Achieves higher correspondence accuracy across diverse faces.
Enhances expression variation modeling.
Abstract
Accurate representations of 3D faces are of paramount importance in various computer vision and graphics applications. However, the challenges persist due to the limitations imposed by data discretization and model linearity, which hinder the precise capture of identity and expression clues in current studies. This paper presents a novel 3D morphable face model, named ImFace++, to learn a sophisticated and continuous space with implicit neural representations. ImFace++ first constructs two explicitly disentangled deformation fields to model complex shapes associated with identities and expressions, respectively, which simultaneously facilitate automatic learning of point-to-point correspondences across diverse facial shapes. To capture more sophisticated facial details, a refinement displacement field within the template space is further incorporated, enabling fine-grained learning of…
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Taxonomy
TopicsFace recognition and analysis · Face and Expression Recognition · Generative Adversarial Networks and Image Synthesis
