Towards Robust Surgical Automation via Digital Twin Representations from Foundation Models
Hao Ding, Lalithkumar Seenivasan, Hongchao Shu, Grayson Byrd, Han Zhang, Pu Xiao, Juan Antonio Barragan, Russell H. Taylor, Peter Kazanzides, Mathias Unberath

TL;DR
This paper introduces a digital twin perception approach using vision foundation models to enhance robustness and generalizability in surgical automation with LLM-based planning.
Contribution
It proposes a novel perception method leveraging digital twins and vision foundation models to improve surgical task automation and robustness.
Findings
Strong task performance in peg transfer and gauze retrieval.
Good generalization to varied environmental settings.
First step towards comprehensive digital twin framework in surgery.
Abstract
Large language model-based (LLM) agents are emerging as a powerful enabler of robust embodied intelligence due to their capability of planning complex action sequences. Sound planning ability is necessary for robust automation in many task domains, but especially in surgical automation. These agents rely on a highly detailed natural language representation of the scene. Thus, to leverage the emergent capabilities of LLM agents for surgical task planning, developing similarly powerful and robust perception algorithms is necessary to derive a detailed scene representation of the environment from visual input. Previous research has focused primarily on enabling LLM-based task planning while adopting simple yet severely limited perception solutions to meet the needs for bench-top experiments, but lacks the critical flexibility to scale to less constrained settings. In this work, we propose…
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