评估基于表面肌电信号预测随意肌收缩的子采样策略

R. Kõiva, Barbara Hilsenbeck, Claudio Castellini
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引用次数: 9

摘要

在之前的研究中,我们发现假肢界非常感兴趣的一些人类随意肌收缩(vmc),即手指屈伸和拇指旋转,可以使用来自表面肌电图(sEMG)的肌肉激活信号有效地预测。在本文中,我们研究了各种子采样策略的有效性,以限制训练数据集的大小,目的是将该方法扩展到一个主要应用于力控假肢的在线vmc预测系统。我们进行了一项实验,其中10名健全的参与者根据视觉刺激弯曲和伸出手指,同时使用肌电图电极和定制的测量设备收集肌肉激活和vmc(表示为协同指尖力)。支持向量机(SVM)在收集数据的一个固定大小的子集上进行训练,该子集使用7种不同的子采样策略获得。然后在后续的新数据上对支持向量机进行测试。我们的实验结果表明,两种子采样策略的预测误差低至6%至12%,这与我们之前在整个数据集离线使用和处理时获得的误差值相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating subsampling strategies for sEMG-based prediction of voluntary muscle contractions
In previous work we showed that some human Voluntary Muscle Contractions (VMCs) of high interest to the prosthetics community, namely finger flexions/extensions and thumb rotation, can be effectively predicted using muscle activation signals coming from surface electromyography (sEMG). In this paper we study the effectiveness of various subsampling strategies to limit the size of the training data set, with the aim of extending the approach to an online VMC-prediction system whose main application will be force-controlled hand prostheses. We performed an experiment in which 10 able-bodied participants flexed and extended their fingers according to a visual stimulus, while muscle activations and VMCs (represented as synergistic fingertip forces) were gathered using sEMG electrodes and a custom-built measurement device. A Support Vector Machine (SVM) was trained on a fixed-sized subset of the collected data, obtained using seven different subsampling strategies. The SVM was then tested on subsequent new data. Our experimental results show that two subsampling strategies attain a prediction error as low as 6% to 12%, which is comparable to the error values obtained in our previous work when the entire data set was used and processed offline.
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