从肌腱驱动手术机器人的演示中学习上下文相关任务

Yixuan Huang, Michael Bentley, Tucker Hermans, A. Kuntz
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引用次数: 2

摘要

肌腱驱动机器人是一种连续体机器人,有可能通过接近难以到达的解剖目标来减少手术的侵入性。在未来,这些机器人的手术任务自动化可能有助于减少外科医生在面对快速增长的人口时的压力。然而,对这些机器人直接编码手术任务及其相关环境是不可行的。在这项工作中,我们采取了一些步骤,使系统能够通过直接从一组专家演示中学习,成功地完成与上下文相关的手术任务。我们提出了三个模型,这些模型以编码演示上下文的向量为条件,对演示进行训练。然后,我们使用这些模型来计划和执行肌腱驱动机器人的运动,类似于训练集中未见的新环境的演示。我们证明了我们的方法在三个手术启发任务的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Learning Context-Dependent Tasks from Demonstration for Tendon-Driven Surgical Robots
Tendon-driven robots, a type of continuum robot, have the potential to reduce the invasiveness of surgery by enabling access to difficult-to-reach anatomical targets. In the future, the automation of surgical tasks for these robots may help reduce surgeon strain in the face of a rapidly growing population. However, directly encoding surgical tasks and their associated context for these robots is infeasible. In this work we take steps toward a system that is able to learn to successfully perform context-dependent surgical tasks by learning directly from a set of expert demonstrations. We present three models trained on the demonstrations conditioned on a vector encoding the context of the demonstration. We then use these models to plan and execute motions for the tendon-driven robot similar to the demonstrations for novel context not seen in the training set. We demonstrate the efficacy of our method on three surgery-inspired tasks.
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