Vision and Contact based Optimal Control for Autonomous Trocar Docking
Christopher E. Mower, Martin Huber, Huanyu Tian, Ayoob Davoodi,, Emmanuel Vander Poorten, Tom Vercauteren, Christos Bergeles

TL;DR
This paper presents an optimal control approach for autonomous trocar docking in robotic surgery, incorporating contact and force feedback to improve safety and effectiveness, validated through real hardware experiments and simulations.
Contribution
It introduces a novel optimal control formulation for contact-based trocar docking, addressing the dynamic interaction between the trocar and endoscope.
Findings
Successfully achieved trocar insertion on real robot setup
Reduced interaction forces in simulation trials
Validated approach with hardware experiments
Abstract
Future operating theatres will be equipped with robots to perform various surgical tasks including, for example, endoscope control. Human-in-the-loop supervisory control architectures where the surgeon selects from several autonomous sequences is already being successfully applied in preclinical tests. Inserting an endoscope into a trocar or introducer is a key step for every keyhole surgical procedure -- hereafter we will only refer to this device as a "trocar". Our goal is to develop a controller for autonomous trocar docking. Autonomous trocar docking is a version of the peg-in-hole problem. Extensive work in the robotics literature addresses this problem. The peg-in-hole problem has been widely studied in the context of assembly where, typically, the hole is considered static and rigid to interaction. In our case, however, the trocar is not fixed and responds to interaction. We…
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Taxonomy
TopicsRobotic Path Planning Algorithms
