SuFIA: Language-Guided Augmented Dexterity for Robotic Surgical Assistants
Masoud Moghani, Lars Doorenbos, William Panitch, Sean Huver, Mahdi Azizian, Ken Goldberg, Animesh Garg
Abstract
In this work, we present SUFIA, the first frame- work for natural language-guided augmented dexterity for robotic surgical assistants. SUFIA incorporates the strong reasoning capabilities of large language models (LLMs) with perception modules to implement high-level planning and low- level control of a robot for surgical sub-task execution. This enables a learning-free approach to surgical augmented dexterity without any in-context examples or motion primitives. SUFIA uses a human-in-the-loop paradigm by restoring control to the surgeon in the case of insufficient information, mitigating unexpected errors for mission-critical tasks. We evaluate SUFIA on four surgical sub-tasks in a simulation environment and two sub-tasks on a physical surgical robotic platform in the lab, demonstrating its ability to perform common surgical sub-tasks through supervised autonomous operation under challenging physical and workspace conditions. Project website: orbit-surgical.github.io/sufia