CVJun 9, 2025

PhysiInter: Integrating Physical Mapping for High-Fidelity Human Interaction Generation

arXiv:2506.07456v13 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work solves the issue of physically implausible motions in human interaction generation for applications like animation and virtual reality, representing an incremental advance.

The paper tackles the problem of generating realistic human motions by addressing physical artifacts like interpenetration and sliding in multi-person interactions, achieving a 3%-89% improvement in physical fidelity.

Driven by advancements in motion capture and generative artificial intelligence, leveraging large-scale MoCap datasets to train generative models for synthesizing diverse, realistic human motions has become a promising research direction. However, existing motion-capture techniques and generative models often neglect physical constraints, leading to artifacts such as interpenetration, sliding, and floating. These issues are exacerbated in multi-person motion generation, where complex interactions are involved. To address these limitations, we introduce physical mapping, integrated throughout the human interaction generation pipeline. Specifically, motion imitation within a physics-based simulation environment is used to project target motions into a physically valid space. The resulting motions are adjusted to adhere to real-world physics constraints while retaining their original semantic meaning. This mapping not only improves MoCap data quality but also directly informs post-processing of generated motions. Given the unique interactivity of multi-person scenarios, we propose a tailored motion representation framework. Motion Consistency (MC) and Marker-based Interaction (MI) loss functions are introduced to improve model performance. Experiments show our method achieves impressive results in generated human motion quality, with a 3%-89% improvement in physical fidelity. Project page http://yw0208.github.io/physiinter

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