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A Unified Framework for the Teleoperation of Surgical Robots in Constrained Workspaces

2019-02-27
Murilo M. Marinho, Bruno V. Adorno, Kanako Harada, Kyoichi Deie, Anton Deguet, Peter Kazanzides, Russell H. Taylor, Mamoru Mitsuishi

Abstract

In adult laparoscopy, robot-aided surgery is a reality in thousands of operating rooms worldwide, owing to the increased dexterity provided by the robotic tools. Many robots and robot control techniques have been developed to aid in more challenging scenarios, such as pediatric surgery and microsurgery. However, the prevalence of case-specific solutions, particularly those focused on non-redundant robots, reduces the reproducibility of the initial results in more challenging scenarios. In this paper, we propose a general framework for the control of surgical robotics in constrained workspaces under teleoperation, regardless of the robot geometry. Our technique is divided into a slave-side constrained optimization algorithm, which provides virtual fixtures, and with Cartesian impedance on the master side to provide force feedback. Experiments with two robotic systems, one redundant and one non-redundant, show that smooth teleoperation can be achieved in adult laparoscopy and infant surgery.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1809.07907

PDF

http://arxiv.org/pdf/1809.07907


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