ArXiv TLDR

DexTwist: Dexterous Hand Retargeting for Twist Motion via Mixed Reality-based Teleoperation

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2605.12182

Dongmyoung Lee, Chengxi Li, Dongheui Lee

cs.RO

TLDR

DexTwist is a mixed reality-based teleoperation framework that improves dexterous robot hand performance for contact-rich twist motions.

Key contributions

  • Introduces DexTwist, a functional twist-retargeting framework for MR-based dexterous teleoperation.
  • Detects tripod pinch and estimates operator's intended screw axis and twist magnitude for precise control.
  • Applies real-time residual joint-space refinement to track turning progress and regularize robot tripod geometry.
  • Minimizes a virtual-object objective for turning angle, screw axis consistency, and tripod stability.

Why it matters

Conventional retargeting struggles with contact-rich twist motions, limiting dexterous teleoperation. DexTwist overcomes this by functionally retargeting twist, enabling robots to perform tasks like cap opening and key turning more reliably. This advances human-robot skill transfer for complex manipulation.

Original Abstract

Dexterous teleoperation via Mixed Reality (MR)-based interfaces offers a scalable paradigm for transferring human manipulation skills to dexterous robot hands. However, conventional retargeting approaches that minimize kinematic dissimilarity (e.g., joint angle or fingertip position error) often fail in contact-rich rotational manipulation, such as cap opening, key turning, and bolt screwing. This failure stems from the embodiment gap: mismatched link lengths, joint axes/limits, and fingertip geometry can cause direct pose imitation to induce tangential fingertip sliding rather than stable object rotation, resulting in screw axis drift, contact slip, and grasp instability. To address this, we propose DexTwist, a functional twist-retargeting framework for MR-based dexterous teleoperation. DexTwist detects a tripod pinch, estimates the operator's intended screw axis and twist magnitude, and applies a real-time residual joint-space refinement that tracks turning progress while regularizing the robot tripod geometry. The refinement minimizes a virtual-object objective defined by turning angle, screw axis consistency, fingertip closure, and tripod stability. Simulation and real-world experiments show that DexTwist improves turning angle tracking and screw axis stability compared with a vector-based retargeting baseline.

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