肌电模块在义肢混合界面中的作用

Tomasz Kocejko, J. Rumiński, Piotr Przystup, A. Poliński, J. Wtorek
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引用次数: 6

摘要

近10%的上肢截肢涉及整个手臂。它会影响人的行动能力,降低工作效率。这两个因素可以通过使用假肢来恢复。然而,人类手臂的复杂性使得恢复其基本功能相当困难。当骨整合和/或定向肌肉神经再生(TMR)不可能时,可以使用不同的方式来控制假体。本文评估了肌电图(EMG)信号在这种控制中的可用性。方法:首先,定义肌电模块可以处理的义肢操作类型。从斜方肌表面获取与预定手势相对应的原始肌电信号。训练模式识别神经网络根据记录的原始数据对手势进行分类。结果:使用56个手势对应的信号对神经网络进行训练。29个训练周期达到了最佳性能。该网络使用56个手势的数据集进行了测试。设计的网络在10名志愿者的手势记录上进行了测试。这些手势的分类准确率接近84%。结论:肌电图分析是一种可靠的模式,当涉及到控制假肢手臂的混合接口。
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The role of EMG module in hybrid interface of prosthetic arm
Nearly 10% of all upper limb amputations concern the whole arm. It affects the mobility and reduces the productivity of such a person. These two factors can be restored by using prosthetics. However, the complexity of human arm makes restoring its basic functions quite difficult. When the osseointegration and/or targeted muscle reinnervation (TMR) are not possible, different modalities can be used to control the prosthesis. In this paper the usability of electromyography (EMG) signals for such a control is evaluated. Method: first, the types of operations performed by the prosthetic arm that could be handled by EMG module were defined. The raw EMG signal, corresponding to the predefined gesture, was acquired from the surface of trapezius muscle. The pattern recognition neural network was trained to classify gestures based on recorded RAW data. Results: The neural network was trained using 56 signals corresponding to performed gestures. Optimal performance was achieved for 29 training cycles. The network was tested using data set of 56 gestures. The designed network was tested on gestures recorded from 10 volunteers. The gestures were correctly classified with nearly 84% accuracy. Conclusions: The EMG analysis is a reliable modality when it comes to hybrid interfaces for control over prosthetic arm.
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