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首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >Online Myoelectric Control of a Dexterous Hand Prosthesis by Transradial Amputees
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Online Myoelectric Control of a Dexterous Hand Prosthesis by Transradial Amputees

机译:经radi动脉截肢者对手部假肢的在线肌电控制

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摘要

A real-time pattern recognition algorithm based on k-nearest neighbors and lazy learning was used to classify, voluntary electromyography (EMG) signals and to simultaneously control movements of a dexterous artificial hand. EMG signals were superficially recorded by eight pairs of electrodes from the stumps of five transradial amputees and forearms of five able-bodied participants and used online to control a robot hand. Seven finger movements (not involving the wrist) were investigated in this study. The first objective was to understand whether and to which extent it is possible to control continuously and in real-time, the finger postures of a prosthetic hand, using superficial EMG, and a practical classifier, also taking advantage of the direct visual feedback of the moving hand. The second objective was to calculate statistical differences in the performance between participants and groups, thereby assessing the general applicability of the proposed method. The average accuracy of the classifier was 79% for amputees and 89% for able-bodied participants. Statistical analysis of the data revealed a difference in control accuracy based on the aetiology of amputation, type of prostheses regularly used and also between able-bodied participants and amputees. These results are encouraging for the development of noninvasive EMG interfaces for the control of dexterous prostheses.
机译:基于k近邻和惰性学习的实时模式识别算法用于分类自愿肌电图(EMG)信号,并同时控制灵巧人工手的运动。 EMG信号由五个经radi骨截肢者和五个健壮参与者的前臂的树桩上的八对电极表面记录,并在线用于控制机器人手。在这项研究中,研究了七个手指运动(不涉及手腕)。第一个目标是了解使用浅表肌电图和实用的分类器是否还可以实时地连续控制假肢的手指姿势以及在何种程度上进行控制,还可以利用假肢的直接视觉反馈动手。第二个目标是计算参与者和组之间的表现的统计差异,从而评估所提出方法的普遍适用性。分类者的平均准确度对于被截肢者为79%,对于健全的参与者为89%。数据的统计分析显示,基于截肢的病因,常规使用的假体类型以及健全的参与者和被截肢者之间,控制准确性存在差异。这些结果对于开发用于控制灵巧假体的非侵入性EMG接口令人鼓舞。

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