UPDF AI

LightPainter: Interactive Portrait Relighting with Freehand Scribble

Yiqun Mei,He Zhang,7 Authors,Vishal M. Patel

2023 · DOI: 10.1109/CVPR52729.2023.00027
Computer Vision and Pattern Recognition · 19 Citations

TLDR

LightPainter is introduced, a scribble-based relighting system that allows users to interactively manipulate portrait lighting effect with ease and demonstrates high-quality and flexible portrait lighting editing capability with both quantitative and qualitative experiments.

Abstract

Recent portrait relighting methods have achieved realistic results of portrait lighting effects given a desired lighting representation such as an environment map. However, these methods are not intuitive for user interaction and lack precise lighting control. We introduce LightPainter, a scribble-based relighting system that allows users to interactively manipulate portrait lighting effect with ease. This is achieved by two conditional neural networks, a delighting module that recovers geometry and albedo optionally conditioned on skin tone, and a scribble-based module for re-lighting. To train the relighting module, we propose a novel scribble simulation procedure to mimic real user scribbles, which allows our pipeline to be trained without any human annotations. We demonstrate high-quality and flexible portrait lighting editing capability with both quantitative and qualitative experiments. User study comparisons with commercial lighting editing tools also demonstrate consistent user preference for our method.