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Towards Improving Myocontrol of Prosthetic Hands: A Study on Automated Instability Detection

机译:改善假肢手的肌电脑:自动不稳定检测研究

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Myocontrol is the control of an assistive device via the interpretation of the subject's intent using surface electromyography, and one paradigmatic instance of myocontrol is in upper-limb prosthetics applications. The reliability of this kind of control remains a key issue - effective and stable upper-limb myocontrol is one of the most interesting open problems in the field of human-robot interfaces and rehabilitation. In this work we focused on the myocontrol of a prosthetic hand while grasping: performing grasp actions only when, and exactly for the duration, the user desires, avoiding failures that can lead to frustrating or catastrophic results. One specific step to improve stability in the myocontrol of prosthetic hands is the possibility to automatically detect the occurrence of a failure. For this purpose, the availability of an automatic “oracle” able to accomplish this work enables the possibility of self-adaptation of the myocontrol system - e.g. via on-demand model updates for incremental learning. According to this view, we performed an experiment using a simplified but still realistic grasping protocol involving four able-bodied expert myocontrol users, and we extracted features from a state-of-the-art commercial prosthetic hand to automatically identify instability in the myocontrol. The results show that a standard classifier is able to detect failures with a mean balanced error rate of 15.98% over the subjects that took part in the experiments. Our results can also be potentially applied in non-medical applications such as, e.g., teleoperation using extra-light interfaces.
机译:Myocontrol是通过使用表面肌电图的解释来控制辅助装置,并且脊髓控制的一个范式实例是上肢假肢应用。这种控制的可靠性仍然是一个关键问题 - 有效且稳定的上肢肌电机是人机界面和康复领域中最有趣的开放问题之一。在这项工作中,我们专注于假肢手的肌电机,同时抓住:仅在用户欲望,避免可能导致令人沮丧或灾难性结果的失败时才表现掌握动作。提高假肢双手骨髓稳定性的一个具体步骤是可能自动检测失败的发生。为此目的,可以实现这项工作的自动“Oracle”的可用性使得能够自适应Myocontrol系统 - 例如,通过按需模型更新进行增量学习。根据这一观点,我们使用简化但仍然的掌握协议进行了一个实验,涉及四个能够拥有的四个能够拥有的专家Myocontrol用户,我们从最先进的商业假肢中提取了特征,以自动识别肌电机中的不稳定性。结果表明,标准分类器能够在参与实验中的受试者上检测具有15.98%的平均平衡误差率的故障。我们的结果也可能应用于非医疗应用,例如,使用超级界面。

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