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On the Use of Temporal and Spectral Central Moments of Forearm Surface EMG for Finger Gesture Classification

机译:前臂表面肌电图的时间和谱中心矩在手指手势分类中的应用

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Analyzing the surface electromyogram (sEMG) signal is becoming increasingly popular in fields other than medical diagnostics, such as assistive technology and human machine interfaces. This work focusses on analysing data from three sEMG sensors placed on the forearm in an armband configuration for the purpose of identification of finger gestures in a sign-language recognition system. The higher order central moments defining the shape of the power spectral density (PSD) are found to be particularly useful for the considered application. A comparative study of temporal and spectral central moments derived from the probability density function (PDF) and PSD of sEMG signals, respectively, is carried out to study their utility in the aforementioned application. Practical experiments reveal that spectral moments along with the most prominently used set of features out-perform the temporal moments in the considered classification. An average classi?cation accuracy of 82.1% is achieved with temporal moments, which is improved to 90.1% with spectral moments.
机译:分析表面肌电图(sEMG)信号在医学诊断以外的其他领域(例如辅助技术和人机界面)越来越受欢迎。这项工作的重点是分析臂环配置中放置在前臂上的三个sEMG传感器的数据,以识别手语识别系统中的手指手势。发现限定功率谱密度(PSD)的形状的高阶中心矩对于所考虑的应用特别有用。分别从sEMG信号的概率密度函数(PDF)和PSD导出的时间和频谱中心矩进行了比较研究,以研究它们在上述应用中的效用。实际实验表明,频谱矩以及最常用的特征集在所考虑的分类中均优于时间矩。瞬时矩的平均分类精度为82.1%,而频谱矩的平均分类精度提高到90.1%。

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