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Towards Open Domain Text-Driven Synthesis of Multi-Person Motions

28 May 2024
Mengyi Shan
Lu Dong
Yutao Han
Yuanyuan Yao
Tao Liu
Ifeoma Nwogu
Guo-Jun Qi
Mitch Hill
    VGen
    DiffM
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Abstract

This work aims to generate natural and diverse group motions of multiple humans from textual descriptions. While single-person text-to-motion generation is extensively studied, it remains challenging to synthesize motions for more than one or two subjects from in-the-wild prompts, mainly due to the lack of available datasets. In this work, we curate human pose and motion datasets by estimating pose information from large-scale image and video datasets. Our models use a transformer-based diffusion framework that accommodates multiple datasets with any number of subjects or frames. Experiments explore both generation of multi-person static poses and generation of multi-person motion sequences. To our knowledge, our method is the first to generate multi-subject motion sequences with high diversity and fidelity from a large variety of textual prompts.

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