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A mechatronics platform to study prosthetic hand control using EMG signals

机译:一个机电一体化平台,用于研究使用EMG信号进行假手控制

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摘要

In this paper, a low-cost mechatronics platform for the design and development of robotic hands as well as a surface electromyogram (EMG) pattern recognition system is proposed. This paper also explores various EMG classification techniques using a low-cost electronics system in prosthetic hand applications. The proposed platform involves the development of a four channel EMG signal acquisition system; pattern recognition of acquired EMG signals; and development of a digital controller for a robotic hand. Four-channel surface EMG signals, acquired from ten healthy subjects for six different movements of the hand, were used to analyse pattern recognition in prosthetic hand control. Various time domain features were extracted and grouped into five ensembles to compare the influence of features in feature-selective classifiers (SLR) with widely considered non-feature-selective classifiers, such as neural networks (NN), linear discriminant analysis (LDA) and support vector machines (SVM) applied with different kernels. The results divulged that the average classification accuracy of the SVM, with a linear kernel function, outperforms other classifiers with feature ensembles, Hudgin's feature set and auto regression (AR) coefficients. However, the slight improvement in classification accuracy of SVM incurs more processing time and memory space in the low-level controller. The Kruskal-Wallis (KW) test also shows that there is no significant difference in the classification performance of SLR with Hudgin's feature set to that of SVM with Hudgin's features along with AR coefficients. In addition, the KW test shows that SLR was found to be better in respect to computation time and memory space, which is vital in a low-level controller. Similar to SVM, with a linear kernel function, other non-feature selective LDA and NN classifiers also show a slight improvement in performance using twice the features but with the drawback of increased memory space requirement and time. This prototype facilitated the study of various issues of pattern recognition and identified an efficient classifier, along with a feature ensemble, in the implementation of EMG controlled prosthetic hands in a laboratory setting at low-cost. This platform may help to motivate and facilitate prosthetic hand research in developing countries.
机译:本文提出了一种用于机械手设计和开发的低成本机电一体化平台,以及一种表面肌电图(EMG)模式识别系统。本文还探讨了在假手应用中使用低成本电子系统的各种EMG分类技术。拟议的平台涉及四通道肌电信号采集系统的开发。采集的肌电信号的模式识别;和开发用于机器人手的数字控制器。从十名健康受试者的六种不同手部运动中获取的四通道表面肌电图信号用于分析人工手部控制中的模式识别。提取各种时域特征并将其分为五个集合,以比较特征选择分类器(SLR)中的特征影响与广泛考虑的非特征选择分类器,例如神经网络(NN),线性判别分析(LDA)和支持向量机(SVM)应用于不同的内核。结果表明,具有线性核函数的SVM的平均分类精度优于具有特征集合,Hudgin特征集和自回归(AR)系数的其他分类器。但是,SVM的分类精度略有提高会导致底层控制器中的处理时间和存储空间更多。 Kruskal-Wallis(KW)测试还显示,具有Hudgin特征集的SLR与具有Hudgin特征集的SVM以及AR系数的分类性能没有显着差异。此外,KW测试表明,在计算时间和存储空间方面,SLR更好,这对于低级控制器至关重要。与具有线性核函数的SVM相似,其他非功能性选择性LDA和NN分类器也使用两倍的功能在性能上有所改善,但缺点是增加了内存空间需求和时间。该原型为研究模式识别的各种问题提供了便利,并在实验室环境中以低成本实施了由EMG控制的假手,从而确定了一个有效的分类器以及一个特征集合。该平台可能有助于激励和促进发展中国家的假手研究。

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