RelightAnyone: A Generalized Relightable 3D Gaussian Head Model
Yingyan Xu, Pramod Rao, Sebastian Weiss, Gaspard Zoss, Markus Gross, Christian Theobalt, Marc Habermann, Derek Bradley

TL;DR
This paper introduces a generalized 3D Gaussian head model capable of relighting any subject from limited images without requiring complex OLAT data, enabling realistic scene illumination adaptation and applications in digital avatar synthesis.
Contribution
A novel two-stage model that learns to relight 3D Gaussian avatars from single or multi-view images without OLAT data, improving generalization and efficiency.
Findings
Successfully relights subjects without OLAT data
Generalizes across diverse datasets and subjects
Enables fitting from a single image for new subjects
Abstract
3D Gaussian Splatting (3DGS) has become a standard approach to reconstruct and render photorealistic 3D head avatars. A major challenge is to relight the avatars to match any scene illumination. For high quality relighting, existing methods require subjects to be captured under complex time-multiplexed illumination, such as one-light-at-a-time (OLAT). We propose a new generalized relightable 3D Gaussian head model that can relight any subject observed in a single- or multi-view images without requiring OLAT data for that subject. Our core idea is to learn a mapping from flat-lit 3DGS avatars to corresponding relightable Gaussian parameters for that avatar. Our model consists of two stages: a first stage that models flat-lit 3DGS avatars without OLAT lighting, and a second stage that learns the mapping to physically-based reflectance parameters for high-quality relighting. This two-stage…
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Taxonomy
TopicsComputer Graphics and Visualization Techniques · Face recognition and analysis · Generative Adversarial Networks and Image Synthesis
