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Robust finger motion classification using frequency characteristics of surface electromyogram signals

机译:利用表面肌电图信号的频率特性进行可靠的手指运动分类

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Finger motion classification using surface electromyogram (EMG) signals is currently being applied to myoelectric prosthetic hands with methods of pattern classification. It can be used to classify motion with great accuracy under ideal circumstances. However, the precision of classification falling to change the quantity of EMG feature with muscle fatigue has been a problem. We addressed this problem in this study, which was aimed at robustly classifying finger motion against changes in EMG features with muscle fatigue. We tested the changes in EMG features before and after muscle fatigue and propose a robust feature that uses a methods of estimating tension in finger motion by taking muscle fatigue into consideration.
机译:使用表面肌电图(EMG)信号的手指运动分类目前正在通过模式分类的方法应用于肌电假肢。在理想情况下,它可以用来对运动进行高精度分类。然而,随着肌肉疲劳而改变EMG特征量的分类精度下降是一个问题。我们在这项研究中解决了这个问题,旨在针对肌肉疲劳的EMG功能变化对手指运动进行可靠分类。我们测试了肌肉疲劳前后肌电图特征的变化,并提出了一种健壮的特征,该特征使用了一种通过考虑肌肉疲劳来估算手指运动中的张力的方法。

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