Latwesen A, Patterson P E
Iowa State University, Ames.
Med Eng Phys. 1994 Mar;16(2):113-21. doi: 10.1016/1350-4533(94)90024-8.
This investigation explored pattern recognition of EMG signals produced by shoulder area muscles to identify the performance of a select number of lower arm motions. The signals were modelled as fourth-order autoregressive processes with the parameters of the models used to classify the different motions. The recorded EMG signal was bandpass filtered for each individual to improve discrimination between signals. The method was shown to detect and identify EMG signatures produced by at least two, and sometimes three, different arm motions. Discrimination between the signal models for the motions was not affected by load variation or muscle fatigue.
本研究探索了肩部肌肉产生的肌电信号的模式识别,以识别一些特定的前臂动作的表现。这些信号被建模为四阶自回归过程,模型参数用于对不同动作进行分类。对每个个体记录的肌电信号进行带通滤波,以提高信号之间的辨别力。该方法被证明能够检测和识别至少两种,有时是三种不同手臂动作产生的肌电特征。动作的信号模型之间的辨别不受负荷变化或肌肉疲劳的影响。