TacMan-Turbo: Proactive Tactile Control for Robust and Efficient Articulated Object Manipulation

arXiv cs.RO / 4/14/2026

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Key Points

  • The paper proposes TacMan-Turbo, a proactive tactile control framework for robot manipulation of articulated objects under uncertain structure.
  • It addresses a key limitation in prior tactile-only methods by treating contact deviations as local kinematic information rather than just errors to compensate reactively.
  • By predicting optimal future interactions from these tactile-derived signals, TacMan-Turbo improves manipulation efficiency while preserving robustness without predefined kinematic models.
  • Experiments across 200 diverse simulated objects plus real-world tests report a 100% success rate and statistically significant gains in time efficiency, action efficiency, and trajectory smoothness (p-values < 0.0001) over a previous tactile-informed baseline.

Abstract

Adept manipulation of articulated objects is essential for robots to operate successfully in human environments. Such manipulation requires both effectiveness--reliable operation despite uncertain object structures--and efficiency--swift execution with minimal redundant steps and smooth actions. Existing approaches struggle to achieve both objectives simultaneously: methods relying on predefined kinematic models lack effectiveness when encountering structural variations, while tactile-informed approaches achieve robust manipulation without kinematic priors but compromise efficiency through reactive, step-by-step exploration-compensation cycles. This paper introduces TacMan-Turbo, a novel proactive tactile control framework for articulated object manipulation that mitigates this fundamental trade-off. Unlike previous approaches that treat tactile contact deviations merely as error signals requiring compensation, our method interprets these deviations as rich sources of local kinematic information. This new perspective enables our controller to predict optimal future interactions and make proactive adjustments, significantly enhancing manipulation efficiency. In comprehensive evaluations across 200 diverse simulated articulated objects and real-world experiments, our approach maintains a 100% success rate while significantly outperforming the previous tactile-informed method in time efficiency, action efficiency, and trajectory smoothness (all p-values < 0.0001). These results demonstrate that the long-standing trade-off between effectiveness and efficiency in articulated object manipulation can be successfully resolved without relying on prior kinematic knowledge.