Continuous Finger Joint Angle Estimation With sEMG Signals

Shengli Zhou, Kuiying Yin
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Abstract

The current sensing devices for measuring continuous finger movement are either restrictive to users (data glove) or easily influenced by external environment (optical or magnetic trackers based method). Therefore, the objective of this study is developing a continuous finger movement tracking system that is more easy and comfortable to use. The surface electromyography (sEMG) signals applied in this study were collected from human forearm with 10 electrodes, and transmitted to the computer via cables. Timedomain features were extracted and further filtered with a low-pass filter to smooth the features. Three partial least square regression (PLSR) based movement estimation models had been built for the three movements investigated in this study, and one movement recognition model was constructed to determine which movement estimation model would be applied for the new incoming samples. The prediction accuracy evaluated in terms of Pearson’s correlation coefficient ranges from 0.84 to 0.91 for single finger flexion, and ranges from 0.53 to 0.83 for the movement of fingers flexed together in fist. The normalized root mean square error (NRMSE) ranges from 0.04 to 0.1 for single finger flexion, and ranges from 0.046 to 0.14 for the movement of fingers flexed together in fist. The effectiveness of PLSR has also been proved by comparing its performance with linear regression (LR) model.
基于表面肌电信号的连续手指关节角度估计
目前用于测量手指连续运动的传感设备要么对用户有限制(数据手套),要么容易受到外部环境的影响(基于光学或磁跟踪器的方法)。因此,本研究的目的是开发一种更易于使用和舒适的连续手指运动跟踪系统。本研究采用10个电极采集人体前臂的表面肌电信号,并通过电缆传输到计算机。提取时域特征,并用低通滤波器进一步滤波以平滑特征。基于偏最小二乘回归(PLSR)建立了三种运动估计模型,并建立了一种运动识别模型,以确定对新输入样本采用哪种运动估计模型。单指屈曲的预测准确度为0.84 ~ 0.91,双手同时屈曲的预测准确度为0.53 ~ 0.83。单指屈曲的归一化均方根误差(NRMSE)范围为0.04 ~ 0.1,双手同时屈曲的归一化均方根误差范围为0.046 ~ 0.14。通过与线性回归(LR)模型的性能比较,验证了PLSR模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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