SurgVisAgent: Multimodal Agentic Model for Versatile Surgical Visual Enhancement
Journal:
arXiv
Published Date:
Jul 3, 2025
Abstract
Precise surgical interventions are vital to patient safety, and advanced
enhancement algorithms have been developed to assist surgeons in
decision-making. Despite significant progress, these algorithms are typically
designed for single tasks in specific scenarios, limiting their effectiveness
in complex real-world situations. To address this limitation, we propose
SurgVisAgent, an end-to-end intelligent surgical vision agent built on
multimodal large language models (MLLMs). SurgVisAgent dynamically identifies
distortion categories and severity levels in endoscopic images, enabling it to
perform a variety of enhancement tasks such as low-light enhancement,
overexposure correction, motion blur elimination, and smoke removal.
Specifically, to achieve superior surgical scenario understanding, we design a
prior model that provides domain-specific knowledge. Additionally, through
in-context few-shot learning and chain-of-thought (CoT) reasoning, SurgVisAgent
delivers customized image enhancements tailored to a wide range of distortion
types and severity levels, thereby addressing the diverse requirements of
surgeons. Furthermore, we construct a comprehensive benchmark simulating
real-world surgical distortions, on which extensive experiments demonstrate
that SurgVisAgent surpasses traditional single-task models, highlighting its
potential as a unified solution for surgical assistance.