Publication | Closed Access
Applying Depth-Sensing to Automated Surgical Manipulation with a da Vinci Robot
37
Citations
49
References
2020
Year
Unknown Venue
Engineering3D Pose EstimationSurgeryDepth MapBiomedical EngineeringMedical RoboticsReliable AutomationKinematicsSurgical PlanningDa Vinci RobotAutomated Surgical ManipulationRecent AdvancesRadiologyMachine VisionComputer-assisted SurgeryMedical ImagingMedicinePeg Transfer TaskImage GuidanceMedical Image ComputingMedical RobotComputer VisionAutomationRobotic SurgeryExtended RealityBiomedical ImagingRobot-assisted SurgeryRobotics
Recent advances in depth-sensing have significantly increased accuracy, resolution, and frame rate, as shown in the 1920x1200 resolution and 13 frames per second Zivid RGBD camera. In this study, we explore the potential of depth sensing for efficient and reliable automation of surgical subtasks. We consider a monochrome (all red) version of the peg transfer task from the Fundamentals of Laparoscopic Surgery training suite implemented with the da Vinci Research Kit (dVRK). We use calibration techniques that allow the imprecise, cable-driven da Vinci to reduce error from 4-5mm to 1-2mm in the task space. We report experimental results for a handover-free version of the peg transfer task, performing 20 and 5 physical episodes with single- and bilateral-arm setups, respectively. Results over 236 and 49 total block transfer attempts for the single- and bilateral-arm peg transfer cases suggest that reliability can be attained with 86.9% and 78.0% for each individual block, with respective block transfer speeds of 10.02 and 5.72 seconds. Supplementary material is available at https://sites.google.com/view/peg-transfer.
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