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ABSTRACT Introduction Short response time is critical for future military medical operations in austere settings or remote areas. Such effective patient care at the point of injury can greatly benefit from the integration of semi-autonomous robotic systems. To achieve autonomy, robots would require massive libraries of maneuvers collected with the goal of training machine learning algorithms. Although this is attainable in controlled settings, obtaining surgical data in austere settings can be difficult. Hence, in this article, we present the Dexterous Surgical Skill (DESK) database for knowledge transfer between robots. The peg transfer task was selected as it is one of the six main tasks of laparoscopic training. In addition, we provide a machine learning framework to evaluate novel transfer learning methodologies on this database. Methods A set of surgical gestures was collected for a peg transfer task, composed of seven atomic maneuvers referred to as surgemes. The collected Dexterous Surgical Skill dataset comprises a set of surgical robotic skills using the four robotic platforms: Taurus II, simulated Taurus II, YuMi, and the da Vinci Research Kit. Then, we explored two different learning scenarios: no-transfer and domain-transfer. In the no-transfer scenario, the training and testing data were obtained from the samemore »
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Gonzalez, Glebys ; Agarwal, Mythra V. ; Balakuntala, Mridul ; Rahman, Md Masudur ; Kaur, Upinder ; Voyles, Richard M. ; Aggarwal, Vaneet ; Xue, Yexiang ; Wachs, Juan ( , Proceedings of the 2021 IEEE International Conference on Robotics and Automation (ICRA))
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Rahman, Md Masudur ; Balakuntala, Mythra V. ; Gonzalez, Glebys ; Agarwal, Mridul ; Kaur, Upinder ; Venkatesh, Vishnunandan L. ; Sanchez-Tamayo, Natalia ; Xue, Yexiang ; Voyles, Richard M. ; Aggarwal, Vaneet ; et al ( , Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization)