ForceFlow: Learning to Feel and Act via Contact-Driven Flow Matching
Shuoheng Zhang, Yifu Yuan, Hongyao Tang, Yan Zheng, Qiaojun Yu, Pengyi Li, Guowei Huang, Helong Huang, Xingyue Quan, Jianye Hao

TL;DR
ForceFlow is a novel contact-driven flow matching framework that enhances robot manipulation by integrating force feedback, hierarchical task decomposition, and multimodal fusion for improved generalization and success in contact-rich tasks.
Contribution
It introduces a force-aware reactive framework with asymmetric multimodal fusion and a Vision-to-Force handover, enabling robust contact-rich manipulation with better generalization.
Findings
37% success rate improvement over ForceVLA
Accurate force signal prediction demonstrated
Superior contact force self-regulation and OOD generalization
Abstract
Existing imitation learning methods enable robots to interact autonomously with the physical environment. However, contact-rich manipulation tasks remain a significant challenge due to complex contact dynamics that demand high-precision force feedback and control. Although recent efforts have attempted to integrate force/torque sensing into policies, how to build a simple yet effective framework that achieves robust generalization under multimodal observations remains an open question. In this paper, we propose ForceFlow, a force-aware reactive framework built upon flow matching. For contact-stage policy design, we investigate force signal fusion mechanisms and adopt an asymmetric multimodal fusion architecture that treats force as a global regulatory signal, combined with a joint prediction paradigm that enhances the policy's understanding of instantaneous force and historical…
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