ArXiv TLDR

Function-based Parametric Co-Design Optimization of Dexterous Hands

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2604.27557

Mohammad Amin Mirzaee, Harsh Gupta, Wenzhen Yuan

cs.RO

TLDR

A new parametric framework unifies robotic hand design parameters for function-based co-design optimization, improving dexterous manipulation.

Key contributions

  • Introduces a comprehensive parametric framework for robotic hand co-design.
  • Unifies palm structure, finger kinematics, fingertip geometry, and surface curvatures.
  • Employs parametric surface deformation kernels for fine geometric features and contact.
  • Validated for grasp stability in simulation and real-world dynamic scenarios.

Why it matters

This paper introduces a systematic, comprehensive framework for robotic hand co-design, addressing limitations of current decoupled approaches. By unifying diverse design parameters, it enables function-based optimization for improved dexterous manipulation. Its open-source release will accelerate future research and development.

Original Abstract

Despite advances in dexterous hand manipulation, robotic hand design is still largely decoupled from task-driven evaluation and control, limiting systematic optimization. Existing robotic hand co-design approaches are often limited in scope, optimizing a small subset of design parameters. We introduce a comprehensive parametric framework for robotic hand generation that unifies palm structure, finger kinematics, fingertip geometry, and fine-scale surface curvatures within a single design space. Fine geometric features are introduced through parametric surface deformation kernels that directly influence contact interactions. We validate the framework on design optimization in grasp stability tasks in simulation and real-world dynamic scenarios. Our framework produces simulation- and fabrication-ready hand models and will be released as open-source to enable rapid design iteration for dexterous hand co-design optimization frameworks and cross-embodiment policy training and control research.

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