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输入形状对用于脑机接口的基于卷积神经网络的原始脑电图运动想象信号分类性能的影响。

Input Shape Effect on Classification Performance of Raw EEG Motor Imagery Signals with Convolutional Neural Networks for Use in Brain-Computer Interfaces.

作者信息

Arı Emre, Taçgın Ertuğrul

机构信息

Department of Mechanical Engineering, Faculty of Engineering, Marmara University, Istanbul 34840, Turkey.

Department of Mechanical Engineering, Faculty of Engineering, Dicle University, Diyarbakır 21280, Turkey.

出版信息

Brain Sci. 2023 Jan 31;13(2):240. doi: 10.3390/brainsci13020240.

Abstract

EEG signals are interpreted, analyzed and classified by many researchers for use in brain-computer interfaces. Although there are many different EEG signal acquisition methods, one of the most interesting is motor imagery signals. Many different signal processing methods, machine learning and deep learning models have been developed for the classification of motor imagery signals. Among these, Convolutional Neural Network models generally achieve better results than other models. Because the size and shape of the data is important for training Convolutional Neural Network models and discovering the right relationships, researchers have designed and experimented with many different input shape structures. However, no study has been found in the literature evaluating the effect of different input shapes on model performance and accuracy. In this study, the effects of different input shapes on model performance and accuracy in the classification of EEG motor imagery signals were investigated, which had not been specifically studied before. In addition, signal preprocessing methods, which take a long time before classification, were not used; rather, two CNN models were developed for training and classification using raw data. Two different datasets, BCI Competition IV 2A and 2B, were used in classification processes. For different input shapes, 53.03-89.29% classification accuracy and 2-23 s epoch time were obtained for 2A dataset, 64.84-84.94% classification accuracy and 4-10 s epoch time were obtained for 2B dataset. This study showed that the input shape has a significant effect on the classification performance, and when the correct input shape is selected and the correct CNN architecture is developed, feature extraction and classification can be done well by the CNN architecture without any signal preprocessing.

摘要

许多研究人员对脑电图(EEG)信号进行解释、分析和分类,以用于脑机接口。尽管有许多不同的EEG信号采集方法,但其中最有趣的一种是运动想象信号。已经开发了许多不同的信号处理方法、机器学习和深度学习模型来对运动想象信号进行分类。其中,卷积神经网络模型通常比其他模型取得更好的结果。由于数据的大小和形状对于训练卷积神经网络模型以及发现正确的关系很重要,研究人员设计并试验了许多不同的输入形状结构。然而,在文献中尚未发现有研究评估不同输入形状对模型性能和准确性的影响。在本研究中,研究了不同输入形状对EEG运动想象信号分类中模型性能和准确性的影响,这在此前尚未有专门研究。此外,没有使用在分类前耗时较长的信号预处理方法;相反,开发了两个卷积神经网络模型,使用原始数据进行训练和分类。在分类过程中使用了两个不同的数据集,即脑机接口竞赛IV 2A和2B。对于不同的输入形状,2A数据集的分类准确率为53.03 - 89.29%,每个时期的时间为2 - 23秒;2B数据集的分类准确率为64.84 - 84.94%,每个时期的时间为4 - 10秒。本研究表明,输入形状对分类性能有显著影响,当选择正确的输入形状并开发正确的卷积神经网络架构时,卷积神经网络架构无需任何信号预处理就能很好地完成特征提取和分类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7276/9954790/f45425387cfb/brainsci-13-00240-g001.jpg

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