Correlation between the stability of feature distribution and classification performance in sEMG signals

Bingbin Wang, E. Kamavuako
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引用次数: 1

Abstract

The long-term robustness of pattern recognition-based myoelectric systems draws more attention from researchers. Though, there is a lack of analysis investigating how features change over time. This study used two metrics: Coefficient of variation of the first four moments (CoV) and Two-Sample Kolmogorov-Smirnov Test statistics (K-S); to quantify the stability of feature distributions and correlate their changes over time to classification performance. We acquired two surface electromyography (sEMG) channels from sixteen subjects (ten able-bodied and six trans-radial amputees) performing three hand motions. Results showed that the selected metrics correlate to some degree to classification accuracy. Feature distributions are affected less by the time when data are combined. These results imply that stable temporal change may be an acceptable way to choose robust features in long term investigations.
表面肌电信号特征分布稳定性与分类性能的关系
基于模式识别的肌电系统的长期鲁棒性越来越受到研究者的关注。但是,缺乏对功能如何随时间变化的分析。本研究使用了两个指标:前四阶矩变异系数(CoV)和两样本Kolmogorov-Smirnov检验统计量(K-S);量化特征分布的稳定性,并将它们随时间的变化与分类性能联系起来。我们获得了16名受试者(10名健全人和6名经桡骨截肢者)进行三种手部运动的两个表面肌电图通道。结果表明,所选择的指标与分类精度有一定的相关性。当数据合并时,特征分布受到的影响较小。这些结果表明,在长期研究中,稳定的时间变化可能是选择稳健特征的一种可接受的方法。
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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