A new tensioning method using deep reinforcement learning for surgical pattern cutting
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conference contribution
posted on 2024-06-06, 07:49 authored by T Nguyen, ND Nguyen, F Bello, S Nahavandi© 2019 IEEE. Surgeons normally need surgical scissors and tissue grippers to cut through a deformable surgical tissue. The cutting accuracy depends on the skills to manipulate these two tools. Such skills are part of basic surgical skills training as in the Fundamentals of Laparoscopic Surgery. The gripper is used to pinch a point on the surgical sheet and pull the tissue to a certain direction to maintain the tension while the scissors cut through a trajectory. As the surgical materials are deformable, it requires a comprehensive tensioning policy to yield appropriate tensioning direction at each step of the cutting process. Automating a tensioning policy for a given cutting trajectory will support not only the human surgeons but also the surgical robots to improve the cutting accuracy and reliability. This paper presents a multiple pinch point approach to modelling an autonomous tensioning planner based on a deep reinforcement learning algorithm. Experiments on a simulator show that the proposed method is superior to existing methods in terms of both performance and robustness.
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Volume
2019-FebruaryPagination
1339-1344Location
Melbourne, VictoriaPublisher DOI
Start date
2019-02-13End date
2019-02-15ISBN-13
9781538663769Language
engPublication classification
E1 Full written paper - refereedCopyright notice
2019, IEEETitle of proceedings
ICIT 2019 : IEEE International Conference on Industrial TechnologyEvent
Industrial Technology. International Conference (2019 : Melbourne, Victoria)Publisher
IEEEPlace of publication
Piscataway, N.J.Usage metrics
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