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Main Authors: Gao, Xuehao, Yang, Yang, Wu, Yang, Du, Shaoyi, Qi, Guo-Jun
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.18700
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author Gao, Xuehao
Yang, Yang
Wu, Yang
Du, Shaoyi
Qi, Guo-Jun
author_facet Gao, Xuehao
Yang, Yang
Wu, Yang
Du, Shaoyi
Qi, Guo-Jun
contents Inferring 3D human motion is fundamental in many applications, including understanding human activity and analyzing one's intention. While many fruitful efforts have been made to human motion prediction, most approaches focus on pose-driven prediction and inferring human motion in isolation from the contextual environment, thus leaving the body location movement in the scene behind. However, real-world human movements are goal-directed and highly influenced by the spatial layout of their surrounding scenes. In this paper, instead of planning future human motion in a 'dark' room, we propose a Multi-Condition Latent Diffusion network (MCLD) that reformulates the human motion prediction task as a multi-condition joint inference problem based on the given historical 3D body motion and the current 3D scene contexts. Specifically, instead of directly modeling joint distribution over the raw motion sequences, MCLD performs a conditional diffusion process within the latent embedding space, characterizing the cross-modal mapping from the past body movement and current scene context condition embeddings to the future human motion embedding. Extensive experiments on large-scale human motion prediction datasets demonstrate that our MCLD achieves significant improvements over the state-of-the-art methods on both realistic and diverse predictions.
format Preprint
id arxiv_https___arxiv_org_abs_2405_18700
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-Condition Latent Diffusion Network for Scene-Aware Neural Human Motion Prediction
Gao, Xuehao
Yang, Yang
Wu, Yang
Du, Shaoyi
Qi, Guo-Jun
Computer Vision and Pattern Recognition
Inferring 3D human motion is fundamental in many applications, including understanding human activity and analyzing one's intention. While many fruitful efforts have been made to human motion prediction, most approaches focus on pose-driven prediction and inferring human motion in isolation from the contextual environment, thus leaving the body location movement in the scene behind. However, real-world human movements are goal-directed and highly influenced by the spatial layout of their surrounding scenes. In this paper, instead of planning future human motion in a 'dark' room, we propose a Multi-Condition Latent Diffusion network (MCLD) that reformulates the human motion prediction task as a multi-condition joint inference problem based on the given historical 3D body motion and the current 3D scene contexts. Specifically, instead of directly modeling joint distribution over the raw motion sequences, MCLD performs a conditional diffusion process within the latent embedding space, characterizing the cross-modal mapping from the past body movement and current scene context condition embeddings to the future human motion embedding. Extensive experiments on large-scale human motion prediction datasets demonstrate that our MCLD achieves significant improvements over the state-of-the-art methods on both realistic and diverse predictions.
title Multi-Condition Latent Diffusion Network for Scene-Aware Neural Human Motion Prediction
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2405.18700