Sanford Joe, Patterson Rita, Popa Dan O
Next Gen Systems Group, Department of Electrical Engineering, University of Texas-Arlington, Arlington, TX, USA.
Department of Family and Osteopathic Manipulative Medicine, University of North Texas-Health Science Center, Fort Worth, TX, USA.
J Rehabil Assist Technol Eng. 2017 Aug 1;4:2055668317708731. doi: 10.1177/2055668317708731. eCollection 2017 Jan-Dec.
Surface electromyography has been a long-standing source of signals for control of powered prosthetic devices. By contrast, force myography is a more recent alternative to surface electromyography that has the potential to enhance reliability and avoid operational challenges of surface electromyography during use. In this paper, we report on experiments conducted to assess improvements in classification of surface electromyography signals through the addition of collocated force myography consisting of piezo-resistive sensors.
Force sensors detect intrasocket pressure changes upon muscle activation due to changes in muscle volume during activities of daily living. A heterogeneous sensor configuration with four surface electromyography-force myography pairs was investigated as a control input for a powered upper limb prosthetic. Training of two different multilevel neural perceptron networks was employed during classification and trained on data gathered during experiments simulating socket shift and muscle fatigue.
Results indicate that intrasocket pressure data used in conjunction with surface EMG data can improve classification of human intent and control of a powered prosthetic device compared to traditional, surface electromyography only systems.
Additional sensors lead to significantly better signal classification during times of user fatigue, poor socket fit, as well as radial and ulnar wrist deviation. Results from experimentally obtained training data sets are presented.
表面肌电图一直是用于控制动力假肢装置的信号来源。相比之下,力肌电图是表面肌电图的一种较新的替代方法,它有可能提高可靠性,并避免表面肌电图在使用过程中的操作挑战。在本文中,我们报告了通过添加由压阻式传感器组成的并置力肌电图来评估表面肌电图信号分类改进的实验。
力传感器在日常生活活动中由于肌肉体积变化而检测到肌肉激活时的插座内压力变化。研究了一种具有四个表面肌电图 - 力肌电图对的异构传感器配置,作为动力上肢假肢的控制输入。在分类过程中采用了两种不同的多级神经感知器网络进行训练,并在模拟插座移位和肌肉疲劳的实验期间收集的数据上进行训练。
结果表明,与传统的仅使用表面肌电图的系统相比,将插座内压力数据与表面肌电图数据结合使用可以改善对人类意图的分类和对动力假肢装置的控制。
在用户疲劳、插座贴合不良以及桡腕和尺腕偏斜期间,额外的传感器可导致明显更好的信号分类。本文展示了从实验获得的训练数据集得出的结果。