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Hauptverfasser: Ma, Yiyi, Liang, Yuanzhi, Li, Xiu, Zhang, Chi, Li, Xuelong
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2508.10297
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author Ma, Yiyi
Liang, Yuanzhi
Li, Xiu
Zhang, Chi
Li, Xuelong
author_facet Ma, Yiyi
Liang, Yuanzhi
Li, Xiu
Zhang, Chi
Li, Xuelong
contents We present Interleaved Learning for Motion Synthesis (InterSyn), a novel framework that targets the generation of realistic interaction motions by learning from integrated motions that consider both solo and multi-person dynamics. Unlike previous methods that treat these components separately, InterSyn employs an interleaved learning strategy to capture the natural, dynamic interactions and nuanced coordination inherent in real-world scenarios. Our framework comprises two key modules: the Interleaved Interaction Synthesis (INS) module, which jointly models solo and interactive behaviors in a unified paradigm from a first-person perspective to support multiple character interactions, and the Relative Coordination Refinement (REC) module, which refines mutual dynamics and ensures synchronized motions among characters. Experimental results show that the motion sequences generated by InterSyn exhibit higher text-to-motion alignment and improved diversity compared with recent methods, setting a new benchmark for robust and natural motion synthesis. Additionally, our code will be open-sourced in the future to promote further research and development in this area.
format Preprint
id arxiv_https___arxiv_org_abs_2508_10297
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle InterSyn: Interleaved Learning for Dynamic Motion Synthesis in the Wild
Ma, Yiyi
Liang, Yuanzhi
Li, Xiu
Zhang, Chi
Li, Xuelong
Computer Vision and Pattern Recognition
We present Interleaved Learning for Motion Synthesis (InterSyn), a novel framework that targets the generation of realistic interaction motions by learning from integrated motions that consider both solo and multi-person dynamics. Unlike previous methods that treat these components separately, InterSyn employs an interleaved learning strategy to capture the natural, dynamic interactions and nuanced coordination inherent in real-world scenarios. Our framework comprises two key modules: the Interleaved Interaction Synthesis (INS) module, which jointly models solo and interactive behaviors in a unified paradigm from a first-person perspective to support multiple character interactions, and the Relative Coordination Refinement (REC) module, which refines mutual dynamics and ensures synchronized motions among characters. Experimental results show that the motion sequences generated by InterSyn exhibit higher text-to-motion alignment and improved diversity compared with recent methods, setting a new benchmark for robust and natural motion synthesis. Additionally, our code will be open-sourced in the future to promote further research and development in this area.
title InterSyn: Interleaved Learning for Dynamic Motion Synthesis in the Wild
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2508.10297