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Infinite Mobility: Scalable High-Fidelity Synthesis of Articulated Objects via Procedural Generation

17 March 2025
Xinyu Lian
Zichao Yu
Ruiming Liang
Yitong Wang
Li Ray Luo
Kaixu Chen
Yuanzhen Zhou
Qihong Tang
Xudong Xu
Zhaoyang Lyu
Bo Dai
Jiangmiao Pang
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Abstract

Large-scale articulated objects with high quality are desperately needed for multiple tasks related to embodied AI. Most existing methods for creating articulated objects are either data-driven or simulation based, which are limited by the scale and quality of the training data or the fidelity and heavy labour of the simulation. In this paper, we propose Infinite Mobility, a novel method for synthesizing high-fidelity articulated objects through procedural generation. User study and quantitative evaluation demonstrate that our method can produce results that excel current state-of-the-art methods and are comparable to human-annotated datasets in both physics property and mesh quality. Furthermore, we show that our synthetic data can be used as training data for generative models, enabling next-step scaling up. Code is available atthis https URL

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@article{lian2025_2503.13424,
  title={ Infinite Mobility: Scalable High-Fidelity Synthesis of Articulated Objects via Procedural Generation },
  author={ Xinyu Lian and Zichao Yu and Ruiming Liang and Yitong Wang and Li Ray Luo and Kaixu Chen and Yuanzhen Zhou and Qihong Tang and Xudong Xu and Zhaoyang Lyu and Bo Dai and Jiangmiao Pang },
  journal={arXiv preprint arXiv:2503.13424},
  year={ 2025 }
}
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