GaussianHead: High-Fidelity Head Avatars With Learnable Gaussian Derivation

Published: 16 Apr 2025, Last Modified: 16 Sept 2025IEEE Transactions on Visualization and Computer GraphicsEveryoneRevisionsCC BY 4.0
Abstract: Creating lifelike 3D head avatars and generating compelling animations for diverse subjects remain challenging in computer vision. This paper presents GaussianHead, which models the active head based on anisotropic 3D Gaussians. Our method integrates a motion deformation field and a single-resolution triplane to capture the head’s intricate dynamics and detailed texture. Notably, we introduce a customized derivation scheme for each 3D Gaussian, facilitating the generation of multiple “doppelgangers” through learnable parameters for precise position transformation. This approach enables efficient representation of diverse Gaussian attributes and ensures their precision. Additionally, we propose an inherited derivation strategy for newly added Gaussians to expedite training. Extensive experiments demonstrate GaussianHead’s efficacy, achieving high-fidelity visual results with a remarkably compact model size (≈ 12 MB). Our method outperforms state-of-the-art alternatives in tasks such as reconstruction, cross-identity reenactment, and novel view synthesis.
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