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Learning Medical Suturing Primitives for Autonomous Suturing

Negin Amirshirzad, Begum Sunal, Özkan Bebek, Erhan Öztop

Year
2021
Citations
6

Abstract

This paper focuses on a learning from demonstration approach for autonomous medical suturing. A conditional neural network is used to learn and generate suturing primitives trajectories which were conditioned on desired context points. Using our designed GUI a user could plan and select suturing insertion points. Given the insertion point our model generates joint trajectories on real time satisfying this condition. The generated trajectories combined with a kinematic feedback loop were used to drive an 11-DOF robotic system and shows satisfying abilities to learn and perform suturing primitives autonomously having only a few demonstrations of the movements.

Keywords

KinematicsComputer scienceContext (archaeology)Point (geometry)TrajectoryPlan (archaeology)Artificial intelligenceRobotArtificial neural networkHuman–computer interaction

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