ImFace++: A Sophisticated Nonlinear 3D Morphable Face Model With Implicit Neural Representations

Mingwu Zheng;Haiyu Zhang;Hongyu Yang;Liming Chen;Di Huang
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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 individual-specific facial details. Furthermore, a Neural Blend-Field is designed to reinforce the representation capabilities through adaptive blending of an array of local fields. In addition to ImFace++, we devise an improved learning strategy to extend expression embeddings, allowing for a broader range of expression variations. Comprehensive qualitative and quantitative evaluation demonstrates that ImFace++ significantly advances the state-of-the-art in terms of both face reconstruction fidelity and correspondence accuracy.
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ImFace++:具有内隐神经表征的复杂非线性三维可变形人脸模型
三维人脸的准确表示在各种计算机视觉和图形应用中至关重要。然而,由于数据离散化和模型线性的限制,目前的研究仍然存在挑战,这阻碍了身份和表达线索的精确捕获。本文提出了一种新的三维可变形人脸模型imface++,该模型通过隐式神经表征来学习复杂的连续空间。imface++首先构建了两个明确解纠缠的变形场,分别对与身份和表情相关的复杂形状进行建模,同时促进了不同面部形状点对点对应关系的自动学习。为了捕获更复杂的面部细节,模板空间中的细化位移场被进一步整合,从而实现对个人特定面部细节的细粒度学习。此外,设计了一个神经混合场,通过自适应混合一组局部场来增强表征能力。除了imface++之外,我们还设计了一种改进的学习策略来扩展表达式嵌入,从而允许更大范围的表达式变化。综合定性和定量评价表明,imface++在人脸重建保真度和对应精度方面都取得了显著的进步。
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