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Exploiting the Intertemporal Structure of the Upper-Limb sEMG: Comparisons between an LSTM Network and Cross-Sectional Myoelectric Pattern Recognition Methods

机译:利用上肢sEMG的跨时结构:LSTM网络和横断面肌电模式识别方法的比较

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The use of natural myoelectric interfaces promises great value for a variety of potential applications, clinical and otherwise, provided a computational mapping between measured neuromuscular activity and executed motion can be approximated to a satisfactory degree. However, prevalent methods intended for such decoding of movement intent from the surface electromyogram (sEMG) based on pattern recognition typically do not capitalize on the inherently time series-like nature of the acquired signals. In this paper, we present the results from a comparative study in which the performances of traditional cross-sectional pattern recognition methods were compared with that of a classifier built on the natural assumption of temporal ordering by utilizing a long short-term memory (LSTM) neural network. The resulting evaluation indicate that the LSTM approach outperforms traditional gesture recognition techniques which are based on cross-sectional inference. These findings held both when the LSTM classifier operated on conventional features and on raw sEMG and for both healthy subjects and transradial amputees.
机译:天然肌电接口的使用有望为临床和其他各种潜在应用带来巨大价值,前提是所测得的神经肌肉活动与所执行的运动之间的计算映射可以近似地令人满意。但是,用于基于模式识别从表面肌电图(sEMG)进行运动意图的这种解码的普遍方法通常不会利用所获取信号的固有类似时间序列的性质。在本文中,我们提供了一项比较研究的结果,在该研究中,将传统的横截面模式识别方法的性能与通过使用长短期记忆(LSTM)在基于时间顺序的自然假设的分类器上的性能进行了比较神经网络。结果评估表明,LSTM方法优于基于横截面推断的传统手势识别技术。当LSTM分类器以常规功能和原始sEMG进行操作时,以及健康受试者和经radi动脉截肢者,这些发现均成立。

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