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Towards Skill Transfer via Learning-Based Guidance in Human-Robot Interaction: An Application to Orthopaedic Surgical Drilling Skill

机译:通过基于学习的人体机器人互动的指导来实现技能转移:矫形外科钻井技能的应用

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This paper presents a machine learning-based guidance (LbG) approach for kinesthetic human-robot interaction (HRI) that can be used in virtual training simulations. Demonstrated positional and force skills are learned to both discriminate the skill levels of users and produce LbG forces. Force information is obtained from virtual forces, which developed based on real computed tomography (CT) data, rather than force sensors. A femur bone drilling simulation is developed to provide a practice environment for orthopaedic residents. The residents are provided with haptic feedback that enable them to feel the variable stiffness of bone layers. The X-ray views of the bone are also presented to them for better tracking of a pre-defined path inside the bone. The simulation is capable of planning a drill path, generating X-rays based on user defined orientation, and recording motion data for user assessment and skill modeling. The knowledge of expert surgeons is also incorporated into the simulation to provide LbG forces for improving the unpredictable motions of the residents. To discriminate the skill level of users, machine learning tools are used to develop surgical expert and resident models. In addition, to improve residents performance, the expert HCRF is used to generate adaptive LbG forces regarding the similarities between residents motions and the expert model. Experimental results show that the learning-based approach is able to assess the skill of users and improve residents performance.
机译:本文介绍了一种基于机器学习的指导(LBG)方法,用于用于虚拟训练模拟的动力学人体机器人交互(HRI)。鉴定了鉴定了用户的技能水平并产生了LBG力的展示了位置和力量技能。强制信息是从虚拟力获得的,该虚拟力基于真实计算的断层扫描(CT)数据而不是力传感器。开发了股骨钻头钻探模拟,为整形外科居民提供练习环境。居民提供触觉反馈,使它们能够感受到骨层的可变刚度。骨的X射线视图也呈现给它们,以便更好地跟踪骨内部的预定路径。该模拟能够规划钻孔路径,基于用户定义的方向生成X射线,以及用于用户评估和技能建模的记录运动数据。专家外科医生的知识也被纳入模拟,以提供LBG力,以改善居民的不可预测的运动。为了区分用户的技能水平,机器学习工具用于开发外科专家和居民模型。此外,为了提高居民的性能,专家HCRF用于生成关于居民运动与专家模型之间的相似性的自适应LBG力。实验结果表明,基于学习的方法能够评估用户的技能,提高居民的性能。

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