Classification of sEMG Biomedical Signals for Upper-Limb Rehabilitation Using the Random Forest Method

Sami Briouza, H. Gritli, N. Khraief, S. Belghith, Dilbag Singh
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引用次数: 5

Abstract

To use surface electromyography (sEMG) signals for therapy and rehabilitation purposes, we first need to tackle a fundamental problem which is the pattern recognition of these signals. Recently, Machine Learning (ML) techniques have drawn a lot of attention from researchers working on sEMG pattern recognition, and the usage of these techniques showed a lot of potentials and proved to be a viable option. For this work, we adopt the random forest classifier, as an ML technique, for the classification of the sEMG signals for the rehabilitation of upper limbs. Furthermore, to be able to test its performance, we considered and tested different combinations of five different time-domain features, namely MAV, WL, ZC, SSC, and finally RMS. Thus, and via experimental results on the adopted dataset, we show how the choice of features influences the quality of classification.
基于随机森林方法的上肢康复表面肌电信号生物医学信号分类
为了将表面肌电信号用于治疗和康复目的,我们首先需要解决一个基本问题,即这些信号的模式识别。最近,机器学习(ML)技术引起了肌电信号模式识别研究人员的广泛关注,这些技术的使用显示出很大的潜力,并被证明是一种可行的选择。在这项工作中,我们采用随机森林分类器作为一种机器学习技术,对上肢康复的表面肌电信号进行分类。此外,为了测试其性能,我们考虑并测试了五种不同时域特征的不同组合,即MAV, WL, ZC, SSC,最后是RMS。因此,通过对所采用数据集的实验结果,我们展示了特征的选择如何影响分类质量。
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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