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Holistic-Motion2D: Scalable Whole-body Human Motion Generation in 2D Space

Yuan Wang
Zhao Wang
Junhao Gong
Di Huang
Tong He
Wanli Ouyang
J. Jiao
Xuetao Feng
Qi Dou
Shixiang Tang
Dan Xu
Abstract

In this paper, we introduce a novel path to general\textit{general} human motion generation by focusing on 2D space. Traditional methods have primarily generated human motions in 3D, which, while detailed and realistic, are often limited by the scope of available 3D motion data in terms of both the size and the diversity. To address these limitations, we exploit extensive availability of 2D motion data. We present Holistic-Motion2D\textbf{Holistic-Motion2D}, the first comprehensive and large-scale benchmark for 2D whole-body motion generation, which includes over 1M in-the-wild motion sequences, each paired with high-quality whole-body/partial pose annotations and textual descriptions. Notably, Holistic-Motion2D is ten times larger than the previously largest 3D motion dataset. We also introduce a baseline method, featuring innovative whole-body part-aware attention\textit{whole-body part-aware attention} and confidence-aware modeling\textit{confidence-aware modeling} techniques, tailored for 2D T\underline{\text T}ext-drivEN\underline{\text{EN}} whole-boD\underline{\text D}y motion genER\underline{\text{ER}}ation, namely Tender\textbf{Tender}. Extensive experiments demonstrate the effectiveness of Holistic-Motion2D\textbf{Holistic-Motion2D} and Tender\textbf{Tender} in generating expressive, diverse, and realistic human motions. We also highlight the utility of 2D motion for various downstream applications and its potential for lifting to 3D motion. The page link is: https://holistic-motion2d.github.io.

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