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Classification of EEG signals using spiking neural networks

机译:使用尖峰神经网络对脑电信号进行分类

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In signal processing applications of conventional artificial neural networks, the processing time of the data is high and the accuracy rates are not good enough. At the same time, time-dependent processing is not possible. In this study, classification of EEG signals was performed using an artificial neural network including the characteristics of spiking neural networks. Successful results were obtained using large data sets. Moreover, by using the neuron model of Eugene M. Izhikevich as the spiking neural network model, the EEG signals were processed biologically realistically.
机译:在常规人工神经网络的信号处理应用中,数据的处理时间长且准确率不够好。同时,与时间有关的处理是不可能的。在这项研究中,使用包括尖峰神经网络特征的人工神经网络对脑电信号进行分类。使用大型数据集获得了成功的结果。此外,通过使用Eugene M. Izhikevich的神经元模型作为尖峰神经网络模型,对EEG信号进行了生物学上的现实处理。

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