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ForceMimic: Force-Centric Imitation Learning with Force-Motion Capture System for Contact-Rich Manipulation

Wenhai Liu
Junbo Wang
Yiming Wang
Weiming Wang
Cewu Lu
Abstract

In most contact-rich manipulation tasks, humans apply time-varying forces to the target object, compensating for inaccuracies in the vision-guided hand trajectory. However, current robot learning algorithms primarily focus on trajectory-based policy, with limited attention given to learning force-related skills. To address this limitation, we introduce ForceMimic, a force-centric robot learning system, providing a natural, force-aware and robot-free robotic demonstration collection system, along with a hybrid force-motion imitation learning algorithm for robust contact-rich manipulation. Using the proposed ForceCapture system, an operator can peel a zucchini in 5 minutes, while force-feedback teleoperation takes over 13 minutes and struggles with task completion. With the collected data, we propose HybridIL to train a force-centric imitation learning model, equipped with hybrid force-position control primitive to fit the predicted wrench-position parameters during robot execution. Experiments demonstrate that our approach enables the model to learn a more robust policy under the contact-rich task of vegetable peeling, increasing the success rates by 54.5% relatively compared to state-ofthe-art pure-vision-based imitation learning. Hardware, code, data and more results can be found on the project website atthis https URL.

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@article{liu2025_2410.07554,
  title={ ForceMimic: Force-Centric Imitation Learning with Force-Motion Capture System for Contact-Rich Manipulation },
  author={ Wenhai Liu and Junbo Wang and Yiming Wang and Weiming Wang and Cewu Lu },
  journal={arXiv preprint arXiv:2410.07554},
  year={ 2025 }
}
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