Classification of EMG Finger Data Acquired with Myo Armband

C. Tepe, M. Erdim
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引用次数: 6

Abstract

Muscles are one of the basic building blocks of our body, which allows us to perform various movements. As a result of the contraction and relaxation of the muscles, myoelectric signals are formed and movement is provided. EMG signal is obtained by measuring these signals with electrodes. By processing EMG signals, human movements can be imitated and used in many different areas.The human hand can perform many combinations of hand gestures thanks to the different mobility of the fingers. For this reason, it can be easier for the prosthetic hands to perform different hand gestures by moving the fingers independently. In this context, the aim of the research is to propose a model by processing EMG signals so that finger gestures can move independently. EMG signals were acquired using myo armbands. Data set was created with 5 finger gestures and resting hand gestures. The data set was filtered, the part where the gesture was performed in the preprocessing was determined and the windowing process was applied. The classification process was performed by eliminating the features of the EMG signals. In the 100 ms 50% overlapping window, 95.8% classification success was achieved by using the SKNN method with the EWL feature. When the experimental results were examined, it was observed that a successful model was created.In this study, a model for prosthetic arm control was proposed by processing finger data. This model is feasible for prosthetic arms and it is estimated that the functionality of the prosthetic arm will be increased by processing finger data.
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Myo臂带获取的手指肌电图数据的分类
肌肉是我们身体的基本组成部分之一,它使我们能够进行各种各样的运动。由于肌肉的收缩和放松,肌电信号形成并提供运动。肌电信号是通过电极测量这些信号得到的。通过处理肌电图信号,可以模仿人类的运动,并将其应用于许多不同的领域。由于手指的不同活动性,人的手可以执行许多手势组合。因此,通过独立移动手指,假肢手可以更容易地执行不同的手势。在这种情况下,研究的目的是提出一个模型,通过处理肌电信号,使手指手势可以独立移动。肌电信号采集使用肌环。数据集是用5指手势和静止手势创建的。对数据集进行滤波,确定预处理中需要执行手势的部分,并进行加窗处理。通过消除肌电信号的特征来进行分类。在100 ms的50%重叠窗口内,结合EWL特征的SKNN方法分类成功率为95.8%。在对实验结果进行检验时,发现建立了一个成功的模型。本研究提出了一种基于手指数据处理的假肢手臂控制模型。该模型在义肢中是可行的,估计通过对手指数据的处理可以增强义肢的功能。
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