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arxiv: 2404.16027 · v1 · pith:NPUO6LH5new · submitted 2024-04-24 · 💻 cs.RO

ORBIT-Surgical: An Open-Simulation Framework for Learning Surgical Augmented Dexterity

classification 💻 cs.RO
keywords orbit-surgicalsurgicallearningrobotdvrkframeworkphysics-basedsimulation
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Physics-based simulations have accelerated progress in robot learning for driving, manipulation, and locomotion. Yet, a fast, accurate, and robust surgical simulation environment remains a challenge. In this paper, we present ORBIT-Surgical, a physics-based surgical robot simulation framework with photorealistic rendering in NVIDIA Omniverse. We provide 14 benchmark surgical tasks for the da Vinci Research Kit (dVRK) and Smart Tissue Autonomous Robot (STAR) which represent common subtasks in surgical training. ORBIT-Surgical leverages GPU parallelization to train reinforcement learning and imitation learning algorithms to facilitate study of robot learning to augment human surgical skills. ORBIT-Surgical also facilitates realistic synthetic data generation for active perception tasks. We demonstrate ORBIT-Surgical sim-to-real transfer of learned policies onto a physical dVRK robot. Project website: orbit-surgical.github.io

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  1. Imitation Learning for Robot Assistance in Open Surgery: A Multi-Policy Evaluation on Suture Following

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    Benchmarking ACT, Diffusion Policy, SmolVLA, and π0 on suture following yields 50-75% success under ideal conditions and 92% stitch completion with π0 in a surgeon-robot trial.