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手部/腕部姿势与力量的同步表面肌电图分类

Simultaneous sEMG Classification of Hand/Wrist Gestures and Forces.

作者信息

Leone Francesca, Gentile Cosimo, Ciancio Anna Lisa, Gruppioni Emanuele, Davalli Angelo, Sacchetti Rinaldo, Guglielmelli Eugenio, Zollo Loredana

机构信息

Unit of Biomedical Robotics and Biomicrosystems, Universiã Bio-Medico di Roma, Rome, Italy.

Italian Workers' Compensation Authority (INAIL), Vigorso di Budrio, Bologna, Italy.

出版信息

Front Neurorobot. 2019 Jun 19;13:42. doi: 10.3389/fnbot.2019.00042. eCollection 2019.

Abstract

Surface electromyography (sEMG) signals represent a promising approach for decoding the motor intention of amputees to control a multifunctional prosthetic hand in a non-invasive way. Several approaches based on proportional amplitude methods or simple thresholds on sEMG signals have been proposed to control a single degree of freedom at time, without the possibility of increasing the number of controllable multiple DoFs in a natural manner. Myoelectric control based on PR techniques have been introduced to add multiple DoFs by keeping low the number of electrodes and allowing the discrimination of different muscular patterns for each class of motion. However, the use of PR algorithms to simultaneously decode both gestures and forces has never been studied deeply. This paper introduces a hierarchical classification approach with the aim to assess the desired hand/wrist gestures, as well as the desired force levels to exert during grasping tasks. A Finite State Machine was introduced to manage and coordinate three classifiers based on the Non-Linear Logistic Regression algorithm. The classification architecture was evaluated across 31 healthy subjects. The "hand/wrist gestures classifier," introduced for the discrimination of seven hand/wrist gestures, presented a mean classification accuracy of 98.78%, while the "Spherical and Tip force classifier," created for the identification of three force levels, reached an average accuracy of 98.80 and 96.09%, respectively. These results were confirmed by Linear Discriminant Analysis (LDA) with time domain features extraction, considered as ground truth for the final validation of the performed analysis. A Wilcoxon Signed-Rank test was carried out for the statistical analysis of comparison between NLR and LDA and statistical significance was considered at < 0.05. The comparative analysis reports not statistically significant differences in terms of F1Score performance between NLR and LDA. Thus, this study reveals that the use of non-linear classification algorithm, as NLR, is as much suitable as the benchmark LDA classifier for implementing an EMG pattern recognition system, able both to decode hand/wrist gestures and to associate different performed force levels to grasping actions.

摘要

表面肌电图(sEMG)信号是一种很有前景的方法,可用于以非侵入性方式解码截肢者的运动意图,以控制多功能假手。已经提出了几种基于比例幅度方法或sEMG信号简单阈值的方法来一次控制一个自由度,而无法以自然方式增加可控多自由度的数量。基于PR技术的肌电控制已被引入,通过保持电极数量较少并允许区分每种运动类别的不同肌肉模式来增加多个自由度。然而,使用PR算法同时解码手势和力的情况从未得到深入研究。本文介绍了一种分层分类方法,旨在评估所需的手部/腕部手势以及在抓握任务期间施加的所需力水平。引入了有限状态机来管理和协调基于非线性逻辑回归算法的三个分类器。该分类架构在31名健康受试者中进行了评估。用于区分七种手部/腕部手势的“手部/腕部手势分类器”的平均分类准确率为98.78%,而用于识别三种力水平的“球形和尖端力分类器”的平均准确率分别达到98.80%和96.09%。这些结果通过具有时域特征提取的线性判别分析(LDA)得到证实,LDA被视为所执行分析最终验证的基准事实。进行了Wilcoxon符号秩检验,用于NLR和LDA之间比较的统计分析,统计学显著性被认为在<0.05。比较分析报告显示,NLR和LDA在F1Score性能方面没有统计学显著差异。因此,本研究表明,使用非线性分类算法(如NLR)与基准LDA分类器一样适合实现肌电模式识别系统,该系统既能解码手部/腕部手势,又能将不同的执行力水平与抓握动作相关联。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/99fe/6593108/ea1668e69384/fnbot-13-00042-g0001.jpg

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