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Parametric Gaussian Human Model: Generalizable Prior for Efficient and Realistic Human Avatar Modeling

Parametric Gaussian Human Model: Generalizable Prior for Efficient and Realistic Human Avatar Modeling

来源:Arxiv_logoArxiv
英文摘要

Photorealistic and animatable human avatars are a key enabler for virtual/augmented reality, telepresence, and digital entertainment. While recent advances in 3D Gaussian Splatting (3DGS) have greatly improved rendering quality and efficiency, existing methods still face fundamental challenges, including time-consuming per-subject optimization and poor generalization under sparse monocular inputs. In this work, we present the Parametric Gaussian Human Model (PGHM), a generalizable and efficient framework that integrates human priors into 3DGS for fast and high-fidelity avatar reconstruction from monocular videos. PGHM introduces two core components: (1) a UV-aligned latent identity map that compactly encodes subject-specific geometry and appearance into a learnable feature tensor; and (2) a disentangled Multi-Head U-Net that predicts Gaussian attributes by decomposing static, pose-dependent, and view-dependent components via conditioned decoders. This design enables robust rendering quality under challenging poses and viewpoints, while allowing efficient subject adaptation without requiring multi-view capture or long optimization time. Experiments show that PGHM is significantly more efficient than optimization-from-scratch methods, requiring only approximately 20 minutes per subject to produce avatars with comparable visual quality, thereby demonstrating its practical applicability for real-world monocular avatar creation.

Cheng Peng、Jingxiang Sun、Yushuo Chen、Zhaoqi Su、Zhuo Su、Yebin Liu

计算技术、计算机技术

Cheng Peng,Jingxiang Sun,Yushuo Chen,Zhaoqi Su,Zhuo Su,Yebin Liu.Parametric Gaussian Human Model: Generalizable Prior for Efficient and Realistic Human Avatar Modeling[EB/OL].(2025-06-06)[2025-06-29].https://arxiv.org/abs/2506.06645.点此复制

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