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NeuCubeRehab: A Pilot Study for EEG Classification in Rehabilitation Practice Based on Spiking Neural Networks

机译:NeuCuberehab:基于尖峰神经网络的康复实践中的EEG分类试验研究

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One of the most important issues among active rehabilitation technique is how to extract the voluntary intention of patient through bio-signals, especially EEG signal. This pilot study investigates the feasibility of utilizing a 3D spiking neural networks-based architecture named NeuCube for EEG data classification in the rehabilitation practice. In this paper, the architecture of the NeuCube is designed and a Functional Electrical Stimulation (FES) rehabilitation scenario is introduced which requires accurate classification of EEG signal to achieve active FES control. Three classes of EEG signals corresponding to three imaginary wrist motions are collected and classified. The NeuCube architecture provides promising classification results, which demonstrates our proposed method is capable of extracting the voluntary intention in the rehabilitation practice.
机译:积极康复技术中最重要的问题之一是如何通过生物信号,尤其是脑电图提取患者的自愿意图。该试点研究调查了利用3D尖峰神经网络的架构命名为Neucube的架构,以便在康复实践中进行EEG数据分类。在本文中,设计了Neueube的架构,并介绍了功能电刺激(FES)康复场景,需要精确分类EEG信号以实现有源FES控制。收集和分类对应于三个虚拟手腕运动的三类EEG信号。 Neucube架构提供了有希望的分类结果,这表明我们的建议方法能够在康复实践中提取自愿意图。

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