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Learning to Relight Portrait Images via a Virtual Light Stage and Synthetic-to-Real Adaptation

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arxiv 2209.10510 v3 pith:VYFP7UIW submitted 2022-09-21 cs.CV cs.GRcs.LG

Learning to Relight Portrait Images via a Virtual Light Stage and Synthetic-to-Real Adaptation

classification cs.CV cs.GRcs.LG
keywords relightingapproachlightportraitstageenvironmentimagemethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Given a portrait image of a person and an environment map of the target lighting, portrait relighting aims to re-illuminate the person in the image as if the person appeared in an environment with the target lighting. To achieve high-quality results, recent methods rely on deep learning. An effective approach is to supervise the training of deep neural networks with a high-fidelity dataset of desired input-output pairs, captured with a light stage. However, acquiring such data requires an expensive special capture rig and time-consuming efforts, limiting access to only a few resourceful laboratories. To address the limitation, we propose a new approach that can perform on par with the state-of-the-art (SOTA) relighting methods without requiring a light stage. Our approach is based on the realization that a successful relighting of a portrait image depends on two conditions. First, the method needs to mimic the behaviors of physically-based relighting. Second, the output has to be photorealistic. To meet the first condition, we propose to train the relighting network with training data generated by a virtual light stage that performs physically-based rendering on various 3D synthetic humans under different environment maps. To meet the second condition, we develop a novel synthetic-to-real approach to bring photorealism to the relighting network output. In addition to achieving SOTA results, our approach offers several advantages over the prior methods, including controllable glares on glasses and more temporally-consistent results for relighting videos.

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Cited by 1 Pith paper

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  1. Lighting-Consistent Object Transfer Across Radiance Fields

    cs.GR 2026-06 unverdicted novelty 6.0

    Diffusion-based per-view harmonization for lighting-consistent object transfer between 3DGS scenes, using heterogeneous training data and final 3D consolidation.