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PSO-based feature selection and neighborhood rough set-based classification for BCI multiclass motor imagery task

机译:基于PSO的特征选择和基于邻域粗糙集的BCI多键电机图像的分类

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In recent years, most of the researchers are developing brain-computer interface (BCI) applications for the physically disabled to be able to interconnect with peripheral devices based on brain activities. Electroencephalogram (EEG) is a very powerful tool for investigating patient's health and different physiological activities of the brain. A significant challenge in this BCI application is the accurate and reliable recognition of motor imagery (MI) task. A brain-computer interface based on MI interprets the patient's brain activities into a control signal through classifying EEG patterns of various motor imagination tasks. The appropriate features are essential to achieving higher classification accuracy of EEG motor imagery task. For EEG signal feature extraction, wavelet transform is suitable for analysis of nonlinear time series signals. Nevertheless, the dimension of the extracted feature is huge and it may reduce the performance of classification method. Dimensionality reduction and classification play an important role in BCI motor imagery research. In this study, hybridization of particle swarm optimization (PSO)-based rough set feature selection technique is proposed for achieving a minimal set of relevant features from extracted features. The selected features are applied to the proposed novel neighborhood rough set classifier (NRSC) method for classification of multiclass motor imagery. The experimental results are delivered for nine subjects of the BCI Competition 2008 Dataset IIa to show the greater performance of the proposed algorithm. The outcome of proposed algorithms produces a higher mean kappa of 0.743 compared to 0.70 from sequential updating semi-supervised spectral regression kernel discriminant analysis. Experimental results show that the strength of the proposed PSO-rough set and NRSC algorithms outperforms the champion of the BCI Competition IV Dataset IIa and other existing research using this dataset.
机译:近年来,大多数研究人员正在开发脑 - 计算机接口(BCI)应用程序,用于物理禁用,能够基于大脑活动与外围设备互连。脑电图(EEG)是一种强大的工具,用于调查患者的健康和大脑的不同生理活动。该BCI应用中的一项重大挑战是对电机图像(MI)任务的准确和可靠的识别。基于MI的脑电脑界面通过分类各种电动机想象任务的EEG模式来解释患者的大脑活动将患者的大脑活动变成控制信号。适当的特征对于实现EEG电机图像任务的更高分类精度至关重要。对于EEG信号特征提取,小波变换适用于非线性时间序列信号的分析。然而,提取特征的尺寸是巨大的,并且可以降低分类方法的性能。减少维度和分类在BCI电机图像研究中发挥着重要作用。在该研究中,提出了基于粒子群优化(PSO)的粗糙设定特征选择技术的杂交,用于实现提取的特征的最小相关特征。所选功能应用于所提出的新颖邻域粗糙集分类器(NRSC)方法,用于分类多字符电机图像。实验结果为BCI竞赛2008年数据集IIA的九个科目提供了众所周知的算法性能。与顺序更新半监督光谱回归核判别分析中,所提出的算法的结果产生0.743的较高平均κ0.743。实验结果表明,建议的PSO粗糙集和NRSC算法的强度优于BCI竞赛IV Dataset IIA的冠军和使用此数据集的其他现有研究。

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