Comparing Armband EMG-based Lifting Load Classification Algorithms using Various Lifting Trials

Sakshi Pranay Taori, Sol Lim
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Abstract

The objective of this study was to evaluate the performance of machine learning (ML) algorithms developed using surface electromyography (EMG) armband sensor data in predicting hand-load levels (5 lb and 15 lb) from diverse lifting trials. Twelve healthy participants (six male and six female) performed repetitive lifting with three different lifting conditions, i.e., symmetric (S), asymmetric (A), and free-dynamic (F) lifts. ML models were developed with four lifting datasets (S, A, S+A, and F) and were cross-validated using F as the test dataset. Mean classification accuracy was significantly lower in models developed with the S dataset (78.8%) compared to A (83.2%) and F (83.4%). Findings indicate that the ML model developed with controlled symmetric lifts was less accurate in predicting the load of more dynamic, unconstrained lifts, which is common in real-world settings.
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基于臂带肌电图的起重载荷分类算法在不同起重试验中的比较
本研究的目的是评估使用表面肌电(EMG)臂带传感器数据开发的机器学习(ML)算法在预测不同举重试验中的手负荷水平(5磅和15磅)方面的性能。12名健康参与者(6男6女)在三种不同的举重条件下重复举重,即对称(S)、不对称(A)和自由动态(F)举重。使用四个提升数据集(S、A、S+A和F)开发ML模型,并使用F作为测试数据集进行交叉验证。使用S数据集开发的模型的平均分类准确率(78.8%)明显低于A(83.2%)和F(83.4%)。研究结果表明,使用受控对称升降机开发的ML模型在预测更多动态、无约束升降机的负载时不太准确,这在现实世界中很常见。
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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