基于差分进化和支持向量机的运动意象脑电信号多目标特征选择

Monalisa Pal, S. Bandyopadhyay
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引用次数: 19

摘要

通过人工手段对计划中的运动相关任务进行加工,为那些因身体残疾或神经运动障碍而无法完成任务的人提供了一种手段。基于脑电图(EEG)的脑机接口(BCI)系统可以被定义为使用从大脑运动激活区捕获的运动图像信号来操作康复设备的非肌肉途径。监督学习可以通过处理原始脑电图信号来帮助预测运动想象行为。而特征空间的维度在这一过程中起着至关重要的作用。大维度特征不仅增加了计算复杂度,而且冗余特征的存在会降低分类精度。在这项工作中,我们打算从左/右运动图像信号的功率谱密度估计获得的特征向量中选择相关特征。BCI竞赛2008 -格拉茨数据集B已被用作原始EEG数据的来源。为了实现这一目标,我们使用了单目标和多目标版本的差分进化,它根据从混淆矩阵中获得的五个指标来优化分类器的性能。支持向量机用于所选特征子集的适应度评估以及心理状态的分类。结果表明,多目标差分进化方法将特征维数从平均60.56%降低到82.60%,同时将测试脑电样本的处理时间从6.1毫秒降低到5.6毫秒,提高了准确率。本文所得到的结果用Friedman检验进行了验证。
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Many-objective feature selection for motor imagery EEG signals using differential evolution and support vector machine
Processing of the movement related task under planning by artificial means provides a means to those people whose natural modality of performing the task is bottlenecked by physical disability or neuro-motor disorders. Electroencephalography (EEG) based Brain-Computer Interfacing (BCI) systems can be defined to be a non-muscular pathway to operate rehabilitative devices using motor imagery signals captured from the motor activation areas in the brain. Supervised learning can help in prediction of motor imagery actions by processing raw EEG signals. However, dimension of the feature space plays a crucial role in this process. Large dimensional features not only increase the computational complexity but also the presence of redundant features causes reduction in classification accuracy. In this work, we intend to select the relevant features from the feature vector obtained by Power Spectrum Density estimation of the left/right motor imagery signals. BCI Competition 2008 - Graz dataset B has been used as the source of raw EEG data. To achieve this goal, we have used single-objective as well as many-objective version of Differential Evolution which optimizes the classifier's performance in terms of five metrics obtained from the Confusion Matrix. Support Vector Machine is used for fitness evaluation of the chosen feature subset as well as for classification of mental states. This work demonstrates the superiority of many-objective Differential Evolution in improving the accuracy due to reduction in feature dimension from an average of 60.56% to 82.60% while processing time of a test EEG sample reduces from 6.1 milliseconds to 5.6 milliseconds. The results obtained in this work are validated using Friedman Test.
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