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Performance of Forearm FMG and sEMG for Estimating Elbow, Forearm and Wrist Positions

机译:前臂FMG和sEMG在评估肘部,前臂和腕部位置时的性能

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摘要

The ability to track upper extremity movement during activity of daily living has the potential to facilitate the recovery of individuals with neurological or physical injuries.Hence,the use of Surface Electromyography (sEMG) signals to predict upper extremity movement is an area of interest in the research community.A less established technique,Force Myography (FMG),which uses force sensors to detect forearm muscle contraction patterns,is also able to detect some movements of the arm.This paper investigates the comparative performance of sEMG and FMG when predicting wrist,forearm and elbow positions using signals extracted from the forearm only.Support Vector Machine (SVM) and Linear Discriminant Analysis (LDA) classifiers were used to evaluate the prediction performance of both FMG and sEMG data.Ten healthy volunteers participated in this study.Under a cross validation across a repetition evaluation scheme,the SVM classifier obtained averaged accuracies of 84.3%,82.4% and 71.0%,respectively,for predicting elbow,forearm and wrist positions using FMG;while sEMG yielded 75.4%,83.4% and 92.4% accuracies for predicting the same respective positions.The accuracies obtained using SVM are slightly,but statistical significantly,higher than the ones obtained using LDA.However,the trends on the classification performances between FMG and sEMG are consistent.These results also indicate that the forearm FMG pattern is highly influenced by the change of elbow position,while the forearm sEMG is less subjected to the change.Overall,both forearm FMG and sEMG techniques provide abundant information that can be utilized for tracking the upper extremity movements.
机译:在日常生活活动中跟踪上肢运动的能力有可能促进神经或身体损伤患者的康复。因此,使用表面肌电图(sEMG)信号预测上肢运动是人们感兴趣的领域。研究力量较弱的技术是力量肌电图(FMG),它使用力传感器检测前臂肌肉的收缩模式,也能够检测到手臂的某些运动。本文研究了sEMG和FMG在预测手腕时的比较性能,仅使用从前臂提取的信号来测量前臂和肘部位置。使用支持向量机(SVM)和线性判别分析(LDA)分类器来评估FMG和sEMG数据的预测性能。十名健康志愿者参与了这项研究。通过重复评估方案进行交叉验证,SVM分类器获得的平均准确度分别为84.3%,82.4%和71.0%,分别实用地,用FMG预测肘,前臂和腕部位置;而sEMG分别预测相同位置的准确度为75.4%,83.4%和92.4%。使用SVM所获得的准确度稍高,但统计学上显着高于使用SVM所获得的准确度。 LDA。但是,FMG和sEMG之间的分类性能趋势是一致的。这些结果还表明,前臂FMG的样式受肘位置的变化影响很大,而前臂sEMG的变化较少。前臂FMG和sEMG技术提供了丰富的信息,可用于跟踪上肢运动。

著录项

  • 来源
    《仿生工程学报(英文版)》 |2017年第2期|284-295|共12页
  • 作者

    Zhen Gang Xiao; Carlo Menon;

  • 作者单位

    Menrva Research Group,Schools of Mechatronic Systems Engineering and Engineering Science,Simon Fraser University,British Columbia V3T 0A3,Canada;

    Menrva Research Group,Schools of Mechatronic Systems Engineering and Engineering Science,Simon Fraser University,British Columbia V3T 0A3,Canada;

  • 收录信息 中国科学引文数据库(CSCD);中国科技论文与引文数据库(CSTPCD);
  • 原文格式 PDF
  • 正文语种 eng
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