Document detail
ID

oai:arXiv.org:2405.19331

Topic
Computer Science - Computer Vision... Computer Science - Artificial Inte... Computer Science - Graphics
Author
Giebenhain, Simon Kirschstein, Tobias Rünz, Martin Agapito, Lourdes Nießner, Matthias
Category

Computer Science

Year

2024

listing date

9/18/2024

Keywords
gaussian science rendering npga parametric neural avatars computer
Metrics

Abstract

The creation of high-fidelity, digital versions of human heads is an important stepping stone in the process of further integrating virtual components into our everyday lives.

Constructing such avatars is a challenging research problem, due to a high demand for photo-realism and real-time rendering performance.

In this work, we propose Neural Parametric Gaussian Avatars (NPGA), a data-driven approach to create high-fidelity, controllable avatars from multi-view video recordings.

We build our method around 3D Gaussian splatting for its highly efficient rendering and to inherit the topological flexibility of point clouds.

In contrast to previous work, we condition our avatars' dynamics on the rich expression space of neural parametric head models (NPHM), instead of mesh-based 3DMMs.

To this end, we distill the backward deformation field of our underlying NPHM into forward deformations which are compatible with rasterization-based rendering.

All remaining fine-scale, expression-dependent details are learned from the multi-view videos.

For increased representational capacity of our avatars, we propose per-Gaussian latent features that condition each primitives dynamic behavior.

To regularize this increased dynamic expressivity, we propose Laplacian terms on the latent features and predicted dynamics.

We evaluate our method on the public NeRSemble dataset, demonstrating that NPGA significantly outperforms the previous state-of-the-art avatars on the self-reenactment task by 2.6 PSNR.

Furthermore, we demonstrate accurate animation capabilities from real-world monocular videos.

;Comment: Project Page: see https://simongiebenhain.github.io/NPGA/ ; Youtube Video: see https://youtu.be/t0S0OK7WnA4

Giebenhain, Simon,Kirschstein, Tobias,Rünz, Martin,Agapito, Lourdes,Nießner, Matthias, 2024, NPGA: Neural Parametric Gaussian Avatars

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