EEG Signals Based Motor Imagery and Movement Classification for BCI Applications

B. Taşar, Orhan Yaman
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引用次数: 2

Abstract

The Brain-Computer Interface (BCI) is a system that uses the neural activity data of the brain to control the devices in the outside world, in other words, to communicate. BCI studies of wearable sensor EEG sensor technology have gained momentum. In this study, in order to enable the use of electroencephalogram (EEG) patterns in BCI applications, the extraction of statistical-based features, the selection of the most effective features with the NCA method, and the determination of the type of motion request with classification algorithms were carried out. The PhysioNet EEG Motor Movement/Imagery dataset was used. For six different types of motion and imaging, 30 statistical features were calculated (960 in total) for each channel of the EEG signals received from the 48-channel EEG sensor head, and the most effective 120 features were selected with NCA. The selected feature set is given as input to the LD, NB, SVM classification algorithms. The test accuracy success of the models is 91.18%, 95.41%, and 99.51%, respectively. These results show that the proposed method will give successful results in BCI applications.
基于脑电信号的脑机接口运动图像和运动分类
脑机接口(BCI)是一种利用大脑的神经活动数据来控制外界设备的系统,换句话说,就是进行通信。脑机接口(BCI)对可穿戴传感器EEG传感器技术的研究取得了进展。在本研究中,为了使脑电图(EEG)模式能够在脑机接口应用中使用,进行了基于统计的特征提取,使用NCA方法选择最有效的特征,以及使用分类算法确定运动请求的类型。使用PhysioNet EEG运动/图像数据集。针对6种不同类型的运动和成像,对48通道脑电信号传感器头接收到的每通道脑电信号计算30个统计特征(共960个),并利用NCA选择最有效的120个特征。选择的特征集作为LD、NB、SVM分类算法的输入。模型的测试准确率分别为91.18%、95.41%和99.51%。结果表明,该方法在BCI应用中取得了良好的效果。
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