Feel Robot Feels: Tactile Feedback Array Glove for Dexterous Manipulation

arXiv cs.RO / 3/31/2026

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Key Points

  • The paper introduces TAG (Tactile Feedback Array Glove), a low-cost glove designed to improve dexterous teleoperation by adding high-resolution tactile feedback alongside precise hand motion capture.
  • TAG uses a non-contact magnetic sensing approach for drift-free, robust 21-DoF joint tracking with reported joint angle errors under 1 degree, aiming to reduce inaccurate hand-to-robot motion mapping.
  • Each finger includes a 32-actuator tactile array packaged in a compact module, producing spatial activation patterns so operators can feel contact geometry and force variation directly at the robot end-effector.
  • Real-world teleoperation experiments and user studies indicate TAG improves real-time perception of contact geometry and dynamic forces, increases success rates in contact-rich tasks, and yields more reliable demonstration data for learning-based manipulation.

Abstract

Teleoperation is a key approach for collecting high-quality, physically consistent demonstrations for robotic manipulation. However, teleoperation for dexterous manipulation remains constrained by: (i) inaccurate hand-robot motion mapping, which limits teleoperated dexterity, and (ii) limited tactile feedback that forces vision-dominated interaction and hinders perception of contact geometry and force variation. To address these challenges, we present TAG, a low-cost glove system that integrates precise hand motion capture with high-resolution tactile feedback, enabling effective tactile-in-the-loop dexterous teleoperation. For motion capture, TAG employs a non-contact magnetic sensing design that provides drift-free, electromagnetically robust 21-DoF joint tracking with joint angle estimation errors below 1 degree. Meanwhile, to restore tactile sensation, TAG equips each finger with a 32-actuator tactile array within a compact 2 cm^2 module, allowing operators to directly feel physical interactions at the robot end-effector through spatial activation patterns. Through real-world teleoperation experiments and user studies, we show that TAG enables reliable real-time perception of contact geometry and dynamic force, improves success rates in contact-rich teleoperation tasks, and increases the reliability of demonstration data collection for learning-based manipulation.