Comparison of non-negative matrix factorization and convolution kernel compensation in surface electromyograms of forearm muscles

M. Šavc, V. Glaser, A. Holobar, I. Cikajlo, Z. Matjačić
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引用次数: 1

Abstract

This contribution compares performances of nonnegative matrix factorization and high-density surface electromyogram (EMG) decomposition on EMG signals recoded from forearm muscles of young healthy subjects. During the EMG measurements, subjects performed dynamic wrist extensions and flexions and universal haptic device robot was used to oppose their movements and to measure wrist kinematics and excreted muscle forces. Recoded EMG signals were independently decomposed by Convolution Kernel Compensation technique and by alternating least squares non-negative matrix factorization. The identified motor unit discharge patterns were summed into cumulative spike trains and compared with non-negative components in each measurement. The results demonstrated good match (average correlation coefficient of 0.92 ± 0.06), but several discrepancies between the identified components have also been observed. In particular, when limiting the time support of identified components to active EMG signal portions only, the average correlation coefficient dropped to 0.72 ±0.20.
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非负矩阵分解与卷积核补偿在前臂肌表面电图上的比较
本研究比较了非负矩阵分解和高密度表面肌电图(EMG)分解对年轻健康受试者前臂肌肉肌电信号的处理效果。在肌电图测量过程中,受试者进行动态手腕伸展和屈曲,并使用通用触觉装置机器人来反对他们的运动,并测量手腕的运动学和排泄的肌肉力。采用卷积核补偿技术和交替最小二乘非负矩阵分解技术对编码后的肌电信号进行独立分解。识别的运动单元放电模式被总结成累积尖峰序列,并在每次测量中与非负分量进行比较。结果吻合良好(平均相关系数为0.92±0.06),但鉴定组分之间也存在一些差异。特别是,当仅将识别分量的时间支持限制在活动肌电信号部分时,平均相关系数降至0.72±0.20。
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