Motion Avatar: Generate Human and Animal Avatars with Arbitrary Motion
BMVC 2024
Zeyu Zhang*, Yiran Wang*, Biao Wu*, Shuo Chen, Zhiyuan Zhang, Shiya Huang, Wenbo Zhang, Meng Fang, Ling Chen, Yang Zhao✉
*Equal contribution ✉Corresponding author: [email protected]
In recent years, there has been significant interest in creating 3D avatars and motions, driven by their diverse applications in areas like film-making, video games, AR/VR, and human-robot interaction. However, current efforts primarily concentrate on either generating the 3D avatar mesh alone or producing motion sequences, with integrating these two aspects proving to be a persistent challenge. Additionally, while avatar and motion generation predominantly target humans, extending these techniques to animals remains a significant challenge due to inadequate training data and methods. To bridge these gaps, our paper presents three key contributions. Firstly, we proposed a novel agent-based approach named Motion Avatar, which allows for the automatic generation of high-quality customizable human and animal avatars with motions through text queries. The method significantly advanced the progress in dynamic 3D character generation. Secondly, we introduced a LLM planner that coordinates both motion and avatar generation, which transforms a discriminative planning into a customizable Q&A fashion. Lastly, we presented an animal motion dataset named Zoo-300K, comprising approximately 300,000 text-motion pairs across 65 animal categories and its building pipeline ZooGen, which serves as a valuable resource for the community.
(07/19/2024) 🎉 Our paper has been accepted to BMVC 2024!
(05/23/2024) 🎉 Our paper has been promoted by AI Bites!
(05/22/2024) 🎉 Our paper has been promoted by Language Model Digest!
(05/21/2024) 🎉 Our paper has been promoted by CSVisionPapers!
@article{zhang2024motionavatar,
title={Motion Avatar: Generate Human and Animal Avatars with Arbitrary Motion},
author={Zhang, Zeyu and Wang, Yiran and Wu, Biao and Chen, Shuo and Zhang, Zhiyuan and Huang, Shiya and Zhang, Wenbo and Fang, Meng and Chen, Ling and Zhao, Yang},
journal={arXiv preprint arXiv:2405.11286},
year={2024}
}