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Deep Learning Classification of two-class Motor Imagery EEG signals using Transfer Learning

机译:使用转移学习的两班电机图像EEG信号的深度学习分类

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Motor imagery (MI) based Brain-Computer Interface (BCI) system uses Electroencephalography (EEG) signals recorded over the scalp during imagination of motor movements to control a computer or mobility device. Such systems require a method to classify the acquired MI EEG signals into commands. In this study, three pre-trained Convolutional Neural Networks (CNN) models- AlexNet, ResNet50 and InceptionV3 are studied for the classification of Left-hand and Right-hand MI EEG signals. BCI Competition IV dataset 2a and acquired MI EEG dataset of nine healthy subjects are used to study the classification performance. Classification results show that transfer learning using InceptionV3 model produces the highest classification accuracy of $82.78 pm 4.87$% for the BCI competition dataset and $83.79 pm 3.49$% for the acquired dataset compared to AlexNet and ResNet50. Hence, InceptionV3 CNN can be used to efficiently classify MI signals in BCI systems to aide people suffering from neuromuscular disorders by replacing or restoring motor functions.
机译:运动想象(MI)基于脑机接口(BCI)系统使用的电机运动的想象力期间记录在头皮,从而控制计算机或移动设备脑电图(EEG)信号。这样的系统需要一个方法来获取的MI EEG信号分类成命令。在这项研究中,训练期三种卷积神经网络(CNN)模型 - AlexNet,ResNet50和InceptionV3都研究了左手和右手MI EEG信号的分类。 BCI竞争IV数据集2a和九个健康受试者收购MI脑电图数据集用于研究的分类性能。分类结果表明,传递学习使用InceptionV3模型产生的$ 82.78的BCI比赛数据集所获得的数据集相比AlexNet和ResNet50最高的分类准确度 4.87下午$%$和83.79 时许$ 3.49%。因此,InceptionV3 CNN可以用来有效地分类MI信号在BCI系统以辅助人们通过替换或恢复运动功能神经肌肉疾病的患者。

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