CVGRJun 1, 2023

AvatarStudio: Text-driven Editing of 3D Dynamic Human Head Avatars

arXiv:2306.00547v239 citationsh-index: 110
Originality Incremental advance
AI Analysis

This enables more flexible and intuitive editing of virtual characters for applications like extended reality and media production, though it builds incrementally on existing NeRF and diffusion model techniques.

The paper tackles the problem of editing the appearance of dynamic 3D human head avatars using text descriptions, achieving results that outperform existing approaches in visual and numerical evaluations, including a user study.

Capturing and editing full head performances enables the creation of virtual characters with various applications such as extended reality and media production. The past few years witnessed a steep rise in the photorealism of human head avatars. Such avatars can be controlled through different input data modalities, including RGB, audio, depth, IMUs and others. While these data modalities provide effective means of control, they mostly focus on editing the head movements such as the facial expressions, head pose and/or camera viewpoint. In this paper, we propose AvatarStudio, a text-based method for editing the appearance of a dynamic full head avatar. Our approach builds on existing work to capture dynamic performances of human heads using neural radiance field (NeRF) and edits this representation with a text-to-image diffusion model. Specifically, we introduce an optimization strategy for incorporating multiple keyframes representing different camera viewpoints and time stamps of a video performance into a single diffusion model. Using this personalized diffusion model, we edit the dynamic NeRF by introducing view-and-time-aware Score Distillation Sampling (VT-SDS) following a model-based guidance approach. Our method edits the full head in a canonical space, and then propagates these edits to remaining time steps via a pretrained deformation network. We evaluate our method visually and numerically via a user study, and results show that our method outperforms existing approaches. Our experiments validate the design choices of our method and highlight that our edits are genuine, personalized, as well as 3D- and time-consistent.

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