English

Correspondence-Free, Function-Based Sim-to-Real Learning for Deformable Surface Control

Robotics 2026-02-04 v3

Abstract

This paper presents a correspondence-free, function-based sim-to-real learning method for controlling deformable freeform surfaces. Unlike traditional sim-to-real transfer methods that strongly rely on marker points with full correspondences, our approach simultaneously learns a deformation function space and a confidence map -- both parameterized by a neural network -- to map simulated shapes to their real-world counterparts. As a result, the sim-to-real learning can be conducted by input from either a 3D scanner as point clouds (without correspondences) or a motion capture system as marker points (tolerating missed markers). The resultant sim-to-real transfer can be seamlessly integrated into a neural network-based computational pipeline for inverse kinematics and shape control. We demonstrate the versatility and adaptability of our method on both vision devices and across four pneumatically actuated soft robots: a deformable membrane, a robotic mannequin, and two soft manipulators.

Keywords

Cite

@article{arxiv.2509.00060,
  title  = {Correspondence-Free, Function-Based Sim-to-Real Learning for Deformable Surface Control},
  author = {Yingjun Tian and Guoxin Fang and Renbo Su and Aoran Lyu and Neelotpal Dutta and Weiming Wang and Simeon Gill and Andrew Weightman and Charlie C. L. Wang},
  journal= {arXiv preprint arXiv:2509.00060},
  year   = {2026}
}

Comments

arXiv admin note: text overlap with arXiv:2405.08935

R2 v1 2026-07-01T05:12:43.326Z