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Classification of Hand Movements by Surface Myoelectric Signal Using Artificial-Spiking Neural Network Model

机译:基于人工加标神经网络模型的表面肌电信号对手部运动的分类

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Real-time classification of the myoelectric signal has applications in the field of neuro-rehabilitation systems such as prosthesis. The classifier which is a human-computer-interaction (HCI) controller should be ideally fast and computationally less intensive. In this work, we have done a simulation-based study to estimate the performance of a deep artificial/spiking neural network (ANN) model for classification. The model parameters are tuned for a subject to get a 93.33 % and 89.39 % classification accuracy using the ANN and SNN classifiers respectively. A comparison between the two classifiers is studied in terms of computational complexity, external noise effect and trained parameters approximation.
机译:肌电信号的实时分类已在假肢等神经康复系统领域中应用。分类器是一种人机交互(HCI)控制器,理想情况下应该是快速的,并且计算强度较小。在这项工作中,我们进行了基于仿真的研究,以评估用于分类的深层人工/尖峰神经网络(ANN)模型的性能。分别使用ANN和SNN分类器对主题的模型参数进行调整,以分别获得93.33%和89.39%的分类精度。在计算复杂度,外部噪声影响和训练参数逼近方面研究了两个分类器之间的比较。

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