Electromyography based hand movement classification and feature extraction using machine learning algorithms

IF 0.3 Q4 ENGINEERING, MULTIDISCIPLINARY Journal of Polytechnic-Politeknik Dergisi Pub Date : 2023-09-19 DOI:10.2339/politeknik.1348121
Ekin EKİNCİ, Zeynep GARİP, Kasım SERBEST
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Abstract

The categorization of hand gestures holds significant importance in controlling orthotic and prosthetic devices, enabling human-machine interaction, and facilitating telerehabilitation applications. For many years, methods of motion analysis based on image processing techniques have been employed to detect hand motions. However, recent research has focused on utilizing muscle contraction for detecting hand movements. Specifically, there has been an increase in studies that classify hand movements using surface electromyography (sEMG) data from the muscles of the hand and arm. In our study, we estimated the open (extension of the fingers) and closed (flexion of the fingers) positions of the hand by analyzing EMG data obtained from 4 volunteer participants' Extensor digitorum and Flexor carpi radialis muscles. In order to accurately discriminate EMG signals, various statistical measures such as variance, standard deviation, root mean square, average energy, minimum and maximum features were utilized. The dataset containing these additional features was then subjected to classification algorithms including Support Vector Machines (SVM), K Nearest Neighbour (KNN), Decision Tree (DT), and Gaussian Naive Bayes (GNB) for the purpose of classifying hand positions into open or closed states. Among the tested algorithms, SVM achieved the highest success rate with a maximum accuracy of 73.1%, while KNN yielded the lowest success rate at a minimum accuracy of 55.9%. To further enhance prediction accuracy in future studies, it is suggested that data from a larger set of muscles be collected.
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基于肌电图的手部运动分类和机器学习算法的特征提取
手势的分类在控制矫形器和假肢装置、实现人机交互和促进远程康复应用方面具有重要意义。多年来,基于图像处理技术的运动分析方法已被用于检测手部运动。然而,最近的研究集中在利用肌肉收缩来检测手部运动。具体来说,使用来自手部和手臂肌肉的表面肌电图(sEMG)数据对手部运动进行分类的研究有所增加。在我们的研究中,我们通过分析4名志愿者的指伸肌和桡侧腕屈肌的肌电图数据来估计手的张开(手指的伸展)和闭合(手指的弯曲)位置。为了准确区分肌电信号,使用了方差、标准差、均方根、平均能量、最小和最大特征等多种统计度量。然后将包含这些附加特征的数据集进行分类算法,包括支持向量机(SVM)、K近邻(KNN)、决策树(DT)和高斯朴素贝叶斯(GNB),以便将手的位置分类为开放或封闭状态。在测试的算法中,SVM的成功率最高,最大准确率为73.1%,而KNN的成功率最低,最小准确率为55.9%。为了在未来的研究中进一步提高预测的准确性,建议从更大的肌肉组收集数据。
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来源期刊
Journal of Polytechnic-Politeknik Dergisi
Journal of Polytechnic-Politeknik Dergisi ENGINEERING, MULTIDISCIPLINARY-
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33.30%
发文量
125
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