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Brain-Computer Interface: Common Tensor Discriminant Analysis classifier evaluation

机译:脑机接口:通用张量判别分析分类器评估

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The performance of the Common Tensor Discriminant Analysis method for Brain-Computer Interface EEG pattern classification is compared with three other classifiers. The classifiers are designed with the aim to distinguish EEG patterns appearing as a result of performance of several mental tasks. Classifier comparison has yielded quite similar results as regards our experimental imagery movement data set as well as for BCI Competition IV data set. The Bayesian and Multiclass Common Spatial Patterns classifiers, which use solely interchannel covariance as input, are shown to be comparable in performance, while lagging behind the Multiclass Common Spatial Patterns classifier and the Common Tensor Discriminant Analysis classifier, that is classifiers which additionally account for EEG frequency structure. It is shown that the Common Tensor Discriminant Analysis classifier and the Multiclass Common Spatial Patterns classifier provide significantly better classification than other two methods but at a higher computational cost.
机译:将脑与计算机接口脑电图模式分类的通用张量判别分析方法的性能与其他三个分类器进行了比较。设计分类器的目的是区分因执行多个心理任务而出现的脑电图模式。对于我们的实验图像运动数据集以及BCI竞赛IV数据集,分类器比较产生了非常相似的结果。仅使用通道间协方差作为输入的贝叶斯和多类公共空间模式分类器显示出可比的性能,而落后于多类公共空间模式分类器和公共张量判别分析分类器,即另外考虑了脑电图的分类器频率结构。结果表明,“公共张量判别分析”分类器和“多类公共空间模式”分类器提供了比其他两种方法明显更好的分类,但是计算成本较高。

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