HeadEvolver: Text to Head Avatars via Expressive and Attribute-Preserving Mesh Deformation
Duotun Wang, Hengyu Meng, Zeyu Cai, Zhijing Shao, Qianxi Liu, Lin, Wang, Mingming Fan, Xiaohang Zhan, Zeyu Wang

TL;DR
HeadEvolver is a novel framework that generates editable, expressive 3D head avatars from text, using mesh deformation and diffusion priors to produce high-quality, attribute-preserving digital assets.
Contribution
It introduces a mesh deformation approach with local learnable vectors and regularization for attribute-preserving, multi-view consistent head avatar generation from text.
Findings
Generates diverse, realistic head avatars with high-quality meshes.
Supports attribute-preserving editing and animation in graphics software.
Outperforms existing methods in quality and editability.
Abstract
Current text-to-avatar methods often rely on implicit representations (e.g., NeRF, SDF, and DMTet), leading to 3D content that artists cannot easily edit and animate in graphics software. This paper introduces a novel framework for generating stylized head avatars from text guidance, which leverages locally learnable mesh deformation and 2D diffusion priors to achieve high-quality digital assets for attribute-preserving manipulation. Given a template mesh, our method represents mesh deformation with per-face Jacobians and adaptively modulates local deformation using a learnable vector field. This vector field enables anisotropic scaling while preserving the rotation of vertices, which can better express identity and geometric details. We employ landmark- and contour-based regularization terms to balance the expressiveness and plausibility of generated avatars from multiple views without…
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Taxonomy
TopicsHuman Pose and Action Recognition · Face recognition and analysis · Multimodal Machine Learning Applications
MethodsDiffusion
