Hybrid Neural Networks for Electroencephalography Motor Imaging Classification

Nhan Trinh, Duc Duong, Binh Tran, Hoai Su
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Abstract

The classification of Electroencephalogram (EEG) Motor-Imaging (MI) signals is becoming a hot topic of research in the field of brain-computer interface (BCI). But this study has many challenges, such as The properties of the electroencephalogram (EEG) are often noisy when collected. The EEG signal is complex with many features in space and time domains, so the electricity EEG is more difficult to decipher than other data types such as text, images, archival data, and EEG that differ individually for each sample examined and collected. Recently, Convolutions Neural Networks (CNN) studies have demonstrated that CNN can be used to efficiently extract features from electroencephalographic (EEG-MI) motor images. Especially convolutional neural networks that combine many layers of convolutional neural networks, the combination of convolutional neural networks and transfer learning methods, or convolutional neural networks combined with bugs, short- long-term memory (LSTM), fully-connected (FC) to increase the efficiency of motor image EEG classification. From those studies, in this paper, we propose Hybrid Convolutional Neural Network (HCNN) as a method combined with transfer learning (TL) to extract and classify 4-dass (right arm, left arm, foot, and tongue) EEG-MI features of the competing BCI sample dataset IV 2a. A mixed neural network (HCNN) is a combination of integrated neural network (CNN) and Long-term Short-Term Memory (LSTM) used to classify features in the spatial and temporal domains of signals. EEG-MI signal. To solve the problems of individual differences in EEG, we implement Full Connection (FC) to fine-tune the parameters relative to the training data. Our proposed method improved the results obtained compared to the results we selected for the match.
脑电运动成像分类的混合神经网络
脑电(EEG)运动成像(MI)信号的分类已成为脑机接口(BCI)领域的研究热点。但这一研究也面临着许多挑战,如采集的脑电图(EEG)往往具有噪声。由于脑电信号具有复杂的空间和时间特征,因此与文本、图像、档案数据和脑电信号等不同类型的数据相比,脑电信号的破译难度更大。最近,卷积神经网络(CNN)的研究表明,CNN可以有效地从脑电图(EEG-MI)运动图像中提取特征。尤其是结合多层卷积神经网络的卷积神经网络,卷积神经网络与迁移学习方法的结合,或者卷积神经网络结合bug、长短期记忆(LSTM)、全连接(FC)来提高运动图像脑电分类效率的卷积神经网络。在这些研究的基础上,本文提出了混合卷积神经网络(HCNN)作为一种结合迁移学习(TL)的方法,从竞争的BCI样本数据集IV 2a中提取和分类4类(右臂、左臂、脚和舌头)EEG-MI特征。混合神经网络(HCNN)是集成神经网络(CNN)和长短期记忆(LSTM)的结合,用于对信号的时空特征进行分类。EEG-MI信号。为了解决脑电图的个体差异问题,我们实现了全连接(FC)来微调相对于训练数据的参数。与我们选择的匹配结果相比,我们提出的方法改进了得到的结果。
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