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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Spiking Neural Networks applied to the classification of motor tasks in EEG signals
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Spiking Neural Networks applied to the classification of motor tasks in EEG signals

机译:尖峰神经网络应用于EEG信号中的电机任务的分类

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Motivated by the recent progress of Spiking Neural Network (SNN) models in pattern recognition, we report on the development and evaluation of brain signal classifiers based on SNNs. The work shows the capabilities of this type of Spiking Neurons in the recognition of motor imagery tasks from EEG signals and compares their performance with other traditional classifiers commonly used in this application. This work includes two stages: the first stage consists of comparing the performance of the SNN models against some traditional neural network models. The second stage, compares the SNN models performance in two input conditions: input features with constant values and input features with temporal information. The EEG signals employed in this work represent five motor imagery tasks: i.e. rest, left hand, right hand, foot and tongue movements. These EEG signals were obtained from a public database provided by the Technological University of Graz (Brunner et al., 2008). The feature extraction stage was performed by applying two algorithms: power spectral density and wavelet decomposition. Likewise, this work uses raw EEG signals for the second stage of the problem solution. All of the models were evaluated in the classification between two motor imagery tasks. This work demonstrates that with a smaller number of Spiking neurons, simple problems can be solved. Better results are obtained by using patterns with temporal information, thereby exploiting the capabilities of the SNNs. (c) 2019 Elsevier Ltd. All rights reserved.
机译:目的是,尖刺神经网络(SNN)模型在模式识别中的进展情况,我们报告了基于SNN的脑信号分类器的开发和评估。该工作表明了这种类型的尖峰神经元的能力在eEG信号中识别电动机图像任务中,并将其性能与本申请中常用的其他传统分类器进行比较。这项工作包括两个阶段:第一阶段包括比较SNN模型对某些传统神经网络模型的性能。第二阶段,将SNN模型性能与两个输入条件进行比较:输入功能,具有常数值和具有时间信息的输入功能。本工作中采用的EEG信号代表五个电动机图像:即休息,左手,右手,脚和舌头运动。这些EEG信号是从格拉茨技术大学提供的公共数据库获得(Brunner等,2008)。通过应用两种算法来执行特征提取阶段:功率谱密度和小波分解。同样,这项工作利用原始EEG信号进行问题解决方案的第二阶段。在两个电动机图像任务之间的分类中评估所有模型。这项工作表明,具有较少数量的尖峰神经元,可以解决简单的问题。通过使用具有时间信息的模式获得更好的结果,从而利用SNN的能力。 (c)2019年elestvier有限公司保留所有权利。

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