首页> 外文期刊>Metrology and Measurement Systems: Metrologia i Systemy Pomiarowe >CRITICAL EXPONENT ANALYSIS APPLIED TO SURFACE EMG SIGNALS FOR GESTURE RECOGNITION
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CRITICAL EXPONENT ANALYSIS APPLIED TO SURFACE EMG SIGNALS FOR GESTURE RECOGNITION

机译:临界指数分析应用于手势识别的表面肌电信号

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摘要

Based on recent advances in non-linear analysis, the surface electromyography (sEMG) signal has been studied from the viewpoints of self-affinity and complexity. In this study, we examine usage of critical exponent analysis (CE) method, a fractal dimension (FD) estimator, to study properties of the sEMG signal and to deploy these properties to characterize different movements for gesture recognition. SEMG signals were recorded from thirty subjects with seven hand movements and eight muscle channels. Mean values and coefficient of variations of the CE from all experiments show that there are larger variations between hand movement types but there is small variation within the same type. It also shows that the CE feature related to the self-affine property for the sEMG signal extracted from different activities is in the range of 1.855approx2.754. These results have also been evaluated by analysis-of-variance (p-value). Results show that the CE feature is more suitable to use as a learning parameter for a classifier compared with other representative features including root mean square, median frequency and Higuchi's method. Most p-values of the CE feature were less than 0.0001. Thus the FD that is computed by the CE method can be applied to be used as a feature for a wide variety of sEMG applications.
机译:基于非线性分析的最新进展,从自亲和性和复杂性的角度研究了表面肌电信号(sEMG)。在这项研究中,我们研究了临界指数分析(CE)方法,分形维数(FD)估计器的使用,以研究sEMG信号的属性并部署这些属性以表征手势识别的不同动作。记录了来自30名受试者的SEMG信号,这些受试者有7次手部运动和8条肌肉通道。所有实验中CE的平均值和变异系数表明,手部动作类型之间的差异较大,但同一类型内的差异较小。它还显示与从不同活动中提取的sEMG信号的自仿射特性有关的CE特征在1.855approx2.754的范围内。这些结果也已通过方差分析(p值)进行了评估。结果表明,与其他有代表性的特征(包括均方根,中位数频率和Higuchi方法)相比,CE特征更适合用作分类器的学习参数。 CE特征的大多数p值都小于0.0001。因此,通过CE方法计算出的FD可以用作多种sEMG应用程序的功能。

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