用bp神经网络评价表面肌电信号中连续肘关节角度的主体间变异性

Hengrui Li, Shuxiang Guo, Dongdong Bu, Hanze Wang
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引用次数: 1

摘要

表面肌电信号作为一种非侵入性手段,在上肢外骨骼康复装置等人机界面中具有很大的应用潜力。然而,由于肌肉活动水平的差异,存在很高的主体间变异性。在这项工作中,通过浅神经网络(BPNN)评估主体间可变性对肘关节连续运动的影响,并分别建立了用户依赖和用户独立模型。在用户依赖模型中,训练集和测试集来自同一主题,使用训练时同一个人的新集作为网络的输入。独立于用户的模型由同一用户和另一个额外的用户构建,以确定模型构建中的主体间可变性。采用评价标准和统计方法对学科间变异程度进行评价。通过预测结果,以及评价标准的取值和统计方法的图可知,表面肌电信号的主体间变异性对肘关节连续角的回归有巨大的影响,可以为今后建立表面肌电信号广义建模来估计肘关节角的研究提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inter-subject Variability Evaluation of Continuous Elbow Angle from sEMG using BPNN
As a non-invasive approach, surface electromyographic (sEMG) signal has great potential for application in human-robot interfaces, such as the upper-limb exoskeleton rehabilitation device. However, due to the differences in activity level of muscles, there exists high inter-subject variability. In this work, the influence of inter-subject variability for elbow continuous motion is evaluated through a shallow neural network (BPNN), and user-dependent and user-independent models are established respectively. In user-dependent model, training and testing sets are from the same subject, new set of the same person as during training is used as the input of network. The user-independent models are constructed by the same user and another additional user to determine inter-subject variability in model construction. To evaluate the degree of inter-subject variability, evaluation criteria and statistical method are adopted. Through the prediction results, and further the value of evaluation criteria and the plot of statistical method, it can be seen that the inter-subject variability on sEMG has a huge impact on the regression of elbow continuous angle, which can provide reference for the future study of building sEMG generalized modeling to estimate elbow angles.
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