首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >A Novel HD-sEMG Preprocessing Method Integrating Muscle Activation Heterogeneity Analysis and Kurtosis-Guided Filtering for High-Accuracy Joint Force Estimation
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A Novel HD-sEMG Preprocessing Method Integrating Muscle Activation Heterogeneity Analysis and Kurtosis-Guided Filtering for High-Accuracy Joint Force Estimation

机译:HD-sEMG预处理的新方法,结合了肌肉激活异质性分析和峰度引导滤波,可进行高精度联合力估计

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摘要

This study proposes a novel preprocessing method integrating muscle activation heterogeneity analysis and kurtosis-guided filtering to realize high-accuracy surface electromyogr-aphy (sEMG)-based force estimation. A total of 10 subjects were recruited. Each subject performed isometric elbow flexion tasks at 20%, 40%, and 60% maximum voluntary contraction (MVC) target force levels, and the joint force and high-density sEMG (HD-sEMG) signals from biceps brachii and brachialis were collected synchronously. The force estimation model was built using three-order polynomial fitting technique. The input signal extraction of the force model, also named as the preprocessing of HD-sEMG signal, was carried out in the following procedures: first, HD-sEMG signals were decomposed by principal component analysis into principal components and weight vectors; second, the first several weight maps were segmented to obtain heterogeneity information by the Otsu and Moore-Neighbor tracing methods, and the principal component covering the most activated areas was selected; and last, a kurtosis-guided filter was designed to process the selected principal component to obtain the input signal. For the sake of comparison, the joint force estimation experiments based ON five preprocessing methods were conducted. The experimental results demonstrated that the proposed method obtained 52%, 53%, and 59% reduction in the mean root mean square difference at 20% MVC, 40% MVC, and 60% MVC force-level tasks, respectively, compared to the preprocessing method with the first principal component plus fixed parameter filtering. This proposed HD-sEMG pre-processing method has reliable neuromuscular electro-physiological foundation, and has good application value for realizing high-accuracy muscle/joint force estimation in the fields of rehabilitation engineering, sports biomechanics, and muscle disease diagnosis etc.
机译:这项研究提出了一种新的预处理方法,将肌肉激活异质性分析和峰态引导滤波相结合,以实现基于高精度表面肌电(sEMG)的力估计。总共招募了10名受试者。每个受试者均以最大自愿收缩(MVC)目标力水平20%,40%和60%进行等距肘关节屈曲任务,并同时收集肱二头肌和肱二头肌的关节力和高密度sEMG(HD-sEMG)信号。使用三阶多项式拟合技术建立了力估计模型。力模型的输入信号提取(也称为HD-sEMG信号的预处理)通过以下过程进行:首先,通过主成分分析将HD-sEMG信号分解为主成分和权重向量;其次,通过Otsu和Moore-Neighbor跟踪方法对前几个权重图进行分段以获得异质性信息,并选择覆盖最活跃区域的主成分。最后,设计了一个峰度导引滤波器来处理选定的主分量以获得输入信号。为了比较,进行了基于五种预处理方法的联合力估计实验。实验结果表明,与预处理相比,该方法在20%MVC,40%MVC和60%MVC力级任务下的均方根差分别降低了52%,53%和59%。第一个主成分加固定参数过滤的方法。提出的HD-sEMG预处理方法具有可靠的神经肌肉电生理基础,在康复工程,运动生物力学和肌肉疾病诊断等领域实现高精度的肌肉/关节力估算具有良好的应用价值。

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