A. Akgul, Merve Bedeloglu, Çağdaş Topçu, Refik Sever, O. Ozkan, O. Ozkan, H. Uysal, O. Polat, O. H. Colak
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引用次数: 2
摘要
在本研究中,通过记录手部和手指24种不同动作的EMG(electromyogram)信号,形成基于RMS(Root Mean Square)、MAV(Mean Absolute Value)和MF(Mean Frequency)特征的自组织图(SOM)结构来检测活跃电极。表面肌电电极记录的数据,从24通道,采样频率为2khz双极,主要是预处理。在预处理中,使用50 Hz陷波滤波器对数据进行滤波,使用6阶Butterworth带通滤波器选择3-450 Hz频段。从肌电信号数据中提取的RMS、MAV和MF特征被定义为SOM分类器的输入。然后,在分类器输出中为每个特征找到活动通道,并对结果进行比较。
Investigation of active channels in multi-channel surface arm EMG recordings for 24 different movements
In this study, a structure based ona Self Organizing Map (SOM) depending on RMS(Root Mean Square), MAV(Mean Absolute Value) and MF(Mean Frequency) features was formed in recording the EMG(Elektromyogram) signals during the performof 24 different movements in hand and fingers to detect of active electrodes.Recorded data with surface EMG electrodes, from 24 channels with 2 kHz sampling frequency as bipolar primarily ispreprocessed. In preprocessing, these data were filtered with 50 Hz notch filter, 3-450 Hz frequency band was selected using the 6th order Butterworth band-pass filter.RMS, MAV and MF features extracting from this EMG data were defined as SOM classifier input. Then, active channels in the classifier output were found for each features and resultswere compared with each other.