ArXiv TLDR

A Benchmark of Dexterity for Anthropomorphic Robotic Hands

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2604.09294

Davide Liconti, Yuning Zhou, Yasunori Toshimitsu, Ronan Hinchet, Robert K. Katzschmann

cs.RO

TLDR

POMDAR is a new benchmark for anthropomorphic robotic hands, standardizing dexterity evaluation through performance-based tasks and quantitative scoring.

Key contributions

  • Introduces POMDAR, a comprehensive, taxonomy-grounded benchmark for robot hand dexterity.
  • Implemented in real-world and simulation, featuring four distinct manipulation configurations.
  • Uses mechanical scaffolding to constrain tasks and enable unambiguous metric measurement.
  • Defines a quantitative scoring metric combining task correctness and execution speed.

Why it matters

This paper addresses the long-standing ambiguity in defining and evaluating robotic hand dexterity. By introducing POMDAR, it provides a standardized, objective benchmark for consistent comparison across diverse hand designs. This will accelerate the development of more dexterous manipulation platforms.

Original Abstract

Dexterity is a central yet ambiguously defined concept in the design and evaluation of anthropomorphic robotic hands. In practice, the term is often used inconsistently, with different systems evaluated under disparate criteria, making meaningful comparisons across designs difficult. This highlights the need for a unified, performance-based definition of dexterity grounded in measurable outcomes rather than proxy metrics. In this work, we introduce POMDAR, a comprehensive dexterity benchmark that formalizes dexterity as task performance across a structured set of manipulation and grasping motions. The benchmark was systematically derived from established taxonomies in human motor control. It is implemented in both real-world and simulation and includes four manipulation configurations: vertical and horizontal configurations, continuous rotation, and pure grasping. The task designs contain mechanical scaffolding to constrain task motion, suppress compensatory strategies, and enable metrics to be measured unambiguously. We define a quantitative scoring metric combining task correctness and execution speed, effectively measuring dexterity as throughput. This enables objective, reproducible, and interpretable evaluation across different hand designs. POMDAR provides an open-source, standardized, and taxonomy-grounded benchmark for consistent comparison and evaluation of anthropomorphic robot hands to facilitate a systematic advancement of dexterous manipulation platforms. CAD, simulation files, and evaluation videos are publicly available at https://srl-ethz.github.io/POMDAR/.

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