AvatarPerfect: User-Assisted 3D Gaussian Splatting Avatar Refinement with Automatic Pose Suggestion
Creating high-quality 3D avatars using 3D Gaussian Splatting (3DGS) from a monocular video benefits virtual reality and telecommunication applications. However, existing automatic methods exhibit artifacts under novel poses due to limited information in the input video. We propose AvatarPerfect, a n...
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Zusammenfassung: | Creating high-quality 3D avatars using 3D Gaussian Splatting (3DGS) from a
monocular video benefits virtual reality and telecommunication applications.
However, existing automatic methods exhibit artifacts under novel poses due to
limited information in the input video. We propose AvatarPerfect, a novel
system that allows users to iteratively refine 3DGS avatars by manually editing
the rendered avatar images. In each iteration, our system suggests a new body
and camera pose to help users identify and correct artifacts. The edited images
are then used to update the current avatar, and our system suggests the next
body and camera pose for further refinement. To investigate the effectiveness
of AvatarPerfect, we conducted a user study comparing our method to an existing
3DGS editor SuperSplat, which allows direct manipulation of Gaussians without
automatic pose suggestions. The results indicate that our system enables users
to obtain higher quality refined 3DGS avatars than the existing 3DGS editor. |
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DOI: | 10.48550/arxiv.2412.15609 |