基于最小二乘支持向量机的多类自定步运动图像时间特征分类

M. Hamedi, S. Salleh, C. Ting, A. M. Noor, I. Rezazadeh
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引用次数: 5

摘要

在脑机接口(BCI)系统中,基于脑电信号的运动图像等心理任务分类是一个具有挑战性的问题。自动分类器调优是实时BCI系统中必不可少的组成部分,它使接口更可靠,更易于使用,并可以提供最佳的分类器配置。本文研究了最小二乘支持向量机(LS-SVM)在自动调整超参数的同时对多类自定步运动图像(MI)时间特征进行分类的鲁棒性。对脑电信号进行预处理,将其分割成不重叠的不同时隙。提取了五种不同的时间特征来表征三种Mis的不同属性。采用扩展版的LS-SVM进行特征分类,同时采用耦合模拟退火(CSA)和单纯形(Simplex)两种优化技术对核模型参数进行调整。通过留一交叉验证(LOOCV)代价函数对LS-SVM参数进行评价和选择。最后,对该方法进行了评价,并与三种常用分类器进行了比较。结果表明,LS-SVM利用SSC特征对不同Mis进行分类的平均准确率为89.88±8.00,具有较高的分类潜力。然而,这种LS-SVM由于其额外的自动模型参数调优步骤而执行缓慢。对比研究表明,不同的分类器在服务不同的特征时表现不同;然而,KNN在分类精度和速度方面都优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiclass self-paced motor imagery temporal features classification using least-square support vector machine
Mental tasks classification such as motor imagery based on EEG signals is a challenging issue in brain-computer interface (BCI) systems. Automatic classifier tuning seems to be an essential component in real-time BCI systems which makes the interface more reliable and easy to use and may offer the optimum configuration of classifier. This paper investigates the robustness of Least-Square Support Vector Machine (LS-SVM) to classify multi-class self-paced motor imagery (MI) temporal features while tuning the hyperparameters automatically. MI electroencephalogram (EEG) signals were preprocessed and segmented into non-overlapped distinctive time slots. Five different temporal features were extracted to characterize various properties of three Mis. An extended version of LS-SVM was employed for feature classification while the kernel model parameters were tuned by means of two optimization techniques, Coupled Simulated Annealing (CSA) followed by Simplex. LS-SVM parameters were evaluated and selected through leave-one-out cross validation (LOOCV) cost function. Finally, the proposed method was evaluated and compared to three widely used classifiers. The results indicated the high potential of LS-SVM to classify different Mis by obtaining the average classification accuracy 89.88±8.00 when using Sign Slop Changes (SSC) features. However, this LS-SVM performed slowly due to its additional steps for automatic model parameter tuning. In the comparative study, it was shown that each classifier behaved differently when various features were served; however, KNN outperformed others in both terms of classification accuracy and speed.
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