MaintaAvatar: A Maintainable Avatar Based on Neural Radiance Fields by Continual Learning
Shengbo Gu, Yu-Kun Qiu, Yu-Ming Tang, Ancong Wu, Wei-Shi Zheng

TL;DR
MaintaAvatar introduces a continual learning-based approach for neural radiance field avatars, enabling updates with limited data while preserving previous appearances and poses, thus creating a maintainable and adaptable virtual avatar.
Contribution
It proposes a novel maintainable avatar framework using global-local storage and pose distillation to prevent forgetting and efficiently update NeRF-based avatars.
Findings
Effective in preserving old appearance quality
Requires limited data for quick fine-tuning
Avoids catastrophic forgetting during updates
Abstract
The generation of a virtual digital avatar is a crucial research topic in the field of computer vision. Many existing works utilize Neural Radiance Fields (NeRF) to address this issue and have achieved impressive results. However, previous works assume the images of the training person are available and fixed while the appearances and poses of a subject could constantly change and increase in real-world scenarios. How to update the human avatar but also maintain the ability to render the old appearance of the person is a practical challenge. One trivial solution is to combine the existing virtual avatar models based on NeRF with continual learning methods. However, there are some critical issues in this approach: learning new appearances and poses can cause the model to forget past information, which in turn leads to a degradation in the rendering quality of past appearances, especially…
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Taxonomy
TopicsHuman Pose and Action Recognition
