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Auteurs principaux: Han, Bo, Peng, Hao, Dong, Minjing, Ren, Yi, Shen, Yixuan, Xu, Chang
Format: Preprint
Publié: 2023
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Accès en ligne:https://arxiv.org/abs/2305.09381
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author Han, Bo
Peng, Hao
Dong, Minjing
Ren, Yi
Shen, Yixuan
Xu, Chang
author_facet Han, Bo
Peng, Hao
Dong, Minjing
Ren, Yi
Shen, Yixuan
Xu, Chang
contents Human motion generation aims to produce plausible human motion sequences according to various conditional inputs, such as text or audio. Despite the feasibility of existing methods in generating motion based on short prompts and simple motion patterns, they encounter difficulties when dealing with long prompts or complex motions. The challenges are two-fold: 1) the scarcity of human motion-captured data for long prompts and complex motions. 2) the high diversity of human motions in the temporal domain and the substantial divergence of distributions from conditional modalities, leading to a many-to-many mapping problem when generating motion with complex and long texts. In this work, we address these gaps by 1) elaborating the first dataset pairing long textual descriptions and 3D complex motions (HumanLong3D), and 2) proposing an autoregressive motion diffusion model (AMD). Specifically, AMD integrates the text prompt at the current timestep with the text prompt and action sequences at the previous timestep as conditional information to predict the current action sequences in an iterative manner. Furthermore, we present its generalization for X-to-Motion with "No Modality Left Behind", enabling the generation of high-definition and high-fidelity human motions based on user-defined modality input.
format Preprint
id arxiv_https___arxiv_org_abs_2305_09381
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle AMD: Autoregressive Motion Diffusion
Han, Bo
Peng, Hao
Dong, Minjing
Ren, Yi
Shen, Yixuan
Xu, Chang
Multimedia
Human motion generation aims to produce plausible human motion sequences according to various conditional inputs, such as text or audio. Despite the feasibility of existing methods in generating motion based on short prompts and simple motion patterns, they encounter difficulties when dealing with long prompts or complex motions. The challenges are two-fold: 1) the scarcity of human motion-captured data for long prompts and complex motions. 2) the high diversity of human motions in the temporal domain and the substantial divergence of distributions from conditional modalities, leading to a many-to-many mapping problem when generating motion with complex and long texts. In this work, we address these gaps by 1) elaborating the first dataset pairing long textual descriptions and 3D complex motions (HumanLong3D), and 2) proposing an autoregressive motion diffusion model (AMD). Specifically, AMD integrates the text prompt at the current timestep with the text prompt and action sequences at the previous timestep as conditional information to predict the current action sequences in an iterative manner. Furthermore, we present its generalization for X-to-Motion with "No Modality Left Behind", enabling the generation of high-definition and high-fidelity human motions based on user-defined modality input.
title AMD: Autoregressive Motion Diffusion
topic Multimedia
url https://arxiv.org/abs/2305.09381