A Co-design Approach for a Rehabilitation Robot Coach for Physical Rehabilitation Based on the Error Classification of Motion Errors

M. Devanne, S. Nguyen, O. Rémy-Néris, Beatrice Le Gales-Garnett, G. Kermarrec, A. Thépaut
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引用次数: 17

Abstract

The rising number of the elderly incurs growing concern about healthcare, and in particular rehabilitation healthcare. Assistive technology and assistive robotics in particular may help to improve this process. We develop a robot coach capable of demonstrating rehabilitation exercises to patients, watch a patient carry out the exercises and give him feedback so as to improve his performance and encourage him. The HRI of the system is based on our study with a team of rehabilitation therapists and with the target population. The system relies on human motion analysis. We develop a method for learning a probabilistic representation of ideal movements from expert demonstrations. A Gaussian Mixture Model is employed from position and orientation features captured using a Microsoft Kinect v2. For assessing patients' movements, we propose a real-time multi-level analysis to both temporally and spatially identify and explain body part errors. This analysis combined with a classification algorithm allows the robot to provide coaching advice to make the patient improve his movements. The evaluation on three rehabilitation exercises shows the potential of the proposed approach for learning and assessing kinaesthetic movements.
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基于运动误差分类的康复机器人教练协同设计方法
老年人数量的增加引起人们对医疗保健,特别是康复保健的日益关注。辅助技术和辅助机器人技术可能有助于改善这一过程。我们开发了一种机器人教练,可以向患者演示康复练习,并观察患者进行练习并给予反馈,从而提高患者的表现并鼓励患者。该系统的HRI是基于我们对一组康复治疗师和目标人群的研究。该系统依赖于人体运动分析。我们开发了一种从专家演示中学习理想运动的概率表示的方法。使用Microsoft Kinect v2捕获的位置和方向特征采用高斯混合模型。为了评估患者的运动,我们提出了一种实时的多层次分析,以在时间和空间上识别和解释身体部位的错误。这种分析与分类算法相结合,使机器人能够提供指导建议,使患者改善他的动作。对三种康复练习的评估显示了所提出的方法在学习和评估动觉运动方面的潜力。
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