Autonomous Laparoscope Control through Unified Mechanics-Based Representation of Multimodal Intraoperative Information
Xiaojian Li, Jin Fang, Yudong Shi, Xilin Xiao, Kai Yan, Kang Min, Ling Li, Hua Tang, and Hangjie Mo

TL;DR
This paper introduces a unified mechanics-based control framework for laparoscope-holding robots that integrates multimodal intraoperative signals into a single wrench representation, enabling multi-task autonomous laparoscope management.
Contribution
It proposes a novel unified modeling approach that combines diverse intraoperative data into an equivalent wrench, facilitating coordinated control for multiple laparoscopic tasks.
Findings
Supports multi-task operation including autonomous instrument tracking.
Maintains RCM constraint and reduces trocar-site contact force.
Validated through phantom and in vivo porcine experiments.
Abstract
Laparoscope-holding robots can provide surgeons with a stable laparoscopic field of view (FOV) and reduce the burden on human assistants. To maintain an ideal intraoperative FOV, the robot must continuously adjust the laparoscope pose according to intraoperative information. However, intraoperative multimodal signals, such as position, force/torque, and images, differ markedly in physical meaning and units, making it difficult to build a unified representation and to generate control commands that can be used directly for laparoscope control. To address this issue, we propose a laparoscope-holding robot control method based on unified mechanics modeling of multimodal information. First, we design mapping strategies for multiple intraoperative sources, including position, force/torque, and images, and unify them into an equivalent-wrench representation in the operational space. Then,…
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