Comparison of Hand Gesture Classification from Surface Electromyography Signal between Artificial Neural Network and Principal Component Analysis

F. Lim, E. Budiarto, Rusman Rusyadi
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Abstract

The goal of this research is to detect Surface Electromyography (SEMG) signal froma person’s arm using Myo Armband and classify his / her performed finger ges-tures based onthe corresponding signal. Artificial Neural Network (based on the machine learning approach)and Principal Component Analysis (based on the feature extraction approach) with and withoutFast Fourier Transform (FFT) were selected as the methods utilized in this research. Analysisresults show that ANN has achieved 62.14% gesture classifying accuracy, while PCA withoutFFT has achieved 30.43% and PCA without FFT has achieved 48.15% accuracy. The threeclassifiers are tested using SEMG data from a set of six recorded custom gestures. Thecomparison results show that the ANN classifier shows higher classifying accuracy and morerobust rather than the PCA classifier’s classi-fying accuracy. Therefore, ANN classifier is moresuited to be implemented in classifying SEMG signals as hand gestures.
人工神经网络与主成分分析在表面肌电信号手势分类中的比较
本研究的目的是利用Myo臂环检测人手臂的表面肌电信号,并根据相应的信号对人的手指动作进行分类。本研究采用了人工神经网络(基于机器学习方法)和主成分分析(基于特征提取方法),分别采用和不采用快速傅里叶变换(FFT)作为研究方法。分析结果表明,人工神经网络的手势分类准确率达到了62.14%,而不加FFT的PCA准确率为30.43%,不加FFT的PCA准确率为48.15%。这三个分类器使用来自一组六个记录的自定义手势的表面肌电信号数据进行测试。对比结果表明,人工神经网络分类器比PCA分类器具有更高的分类精度和更强的分类能力。因此,ANN分类器更适合于将表面肌电信号分类为手势。
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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