Data-driven Holistic Framework for Automated Laparoscope Optimal View Control with Learning-based Depth Perception
Bin Li, Bo Lu, Yiang Lu, Qi Dou, and Yun-Hui Liu

TL;DR
This paper presents a data-driven, learning-based framework for automated laparoscope view control in minimally invasive surgery, integrating depth perception, tool segmentation, and distortion minimization to improve surgical assistance.
Contribution
It introduces a novel unsupervised depth estimation model and a control framework that combines learned motion strategies, real-time tool segmentation, and distortion correction for autonomous laparoscope positioning.
Findings
Framework successfully automates laparoscope control in experiments.
Depth estimation and tool segmentation achieve high accuracy.
Distortion minimization improves visual stability during surgery.
Abstract
Laparoscopic Field of View (FOV) control is one of the most fundamental and important components in Minimally Invasive Surgery (MIS), nevertheless, the traditional manual holding paradigm may easily bring fatigue to surgical assistants, and misunderstanding between surgeons also hinders assistants to provide a high-quality FOV. Targeting this problem, we here present a data-driven framework to realize an automated laparoscopic optimal FOV control. To achieve this goal, we offline learn a motion strategy of laparoscope relative to the surgeon's hand-held surgical tool from our in-house surgical videos, developing our control domain knowledge and an optimal view generator. To adjust the laparoscope online, we first adopt a learning-based method to segment the two-dimensional (2D) position of the surgical tool, and further leverage this outcome to obtain its scale-aware depth from dense…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · Soft Robotics and Applications
