SunStage: Portrait Reconstruction and Relighting using the Sun as a
Light Stage
- URL: http://arxiv.org/abs/2204.03648v2
- Date: Fri, 24 Mar 2023 22:54:08 GMT
- Title: SunStage: Portrait Reconstruction and Relighting using the Sun as a
Light Stage
- Authors: Yifan Wang, Aleksander Holynski, Xiuming Zhang and Xuaner Zhang
- Abstract summary: A light stage uses a series of calibrated cameras and lights to capture a subject's facial appearance under varying illumination and viewpoint.
Unfortunately, light stages are often inaccessible: they are expensive and require significant technical expertise for construction and operation.
We present SunStage: a lightweight alternative to a light stage that captures comparable data using only a smartphone camera and the sun.
- Score: 75.0473791925894
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A light stage uses a series of calibrated cameras and lights to capture a
subject's facial appearance under varying illumination and viewpoint. This
captured information is crucial for facial reconstruction and relighting.
Unfortunately, light stages are often inaccessible: they are expensive and
require significant technical expertise for construction and operation. In this
paper, we present SunStage: a lightweight alternative to a light stage that
captures comparable data using only a smartphone camera and the sun. Our method
only requires the user to capture a selfie video outdoors, rotating in place,
and uses the varying angles between the sun and the face as guidance in joint
reconstruction of facial geometry, reflectance, camera pose, and lighting
parameters. Despite the in-the-wild un-calibrated setting, our approach is able
to reconstruct detailed facial appearance and geometry, enabling compelling
effects such as relighting, novel view synthesis, and reflectance editing.
Results and interactive demos are available at
https://sunstage.cs.washington.edu/.
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