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Sim-To-Real Transfer for Visual Reinforcement Learning of Deformable Object Manipulation for Robot-Assisted Surgery

Authors :
Scheikl, Paul Maria
Tagliabue, Eleonora
Gyenes, Balázs
Wagner, Martin
Dall'Alba, Diego
Fiorini, Paolo
Mathis-Ullrich, Franziska
Source :
IEEE Robotics and Automation Letters 8 (2023) 560-567
Publication Year :
2024

Abstract

Automation holds the potential to assist surgeons in robotic interventions, shifting their mental work load from visuomotor control to high level decision making. Reinforcement learning has shown promising results in learning complex visuomotor policies, especially in simulation environments where many samples can be collected at low cost. A core challenge is learning policies in simulation that can be deployed in the real world, thereby overcoming the sim-to-real gap. In this work, we bridge the visual sim-to-real gap with an image-based reinforcement learning pipeline based on pixel-level domain adaptation and demonstrate its effectiveness on an image-based task in deformable object manipulation. We choose a tissue retraction task because of its importance in clinical reality of precise cancer surgery. After training in simulation on domain-translated images, our policy requires no retraining to perform tissue retraction with a 50% success rate on the real robotic system using raw RGB images. Furthermore, our sim-to-real transfer method makes no assumptions on the task itself and requires no paired images. This work introduces the first successful application of visual sim-to-real transfer for robotic manipulation of deformable objects in the surgical field, which represents a notable step towards the clinical translation of cognitive surgical robotics.

Subjects

Subjects :
Computer Science - Robotics

Details

Database :
arXiv
Journal :
IEEE Robotics and Automation Letters 8 (2023) 560-567
Publication Type :
Report
Accession number :
edsarx.2406.06092
Document Type :
Working Paper
Full Text :
https://doi.org/10.1109/LRA.2022.3227873