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Mental tasks classifications using S-transform for BCI applications

机译:Mental任务使用S-Transforms进行BCI应用程序的分类

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The classification of different types of mental tasks is an active area of research that seems to be ever expanding. This field is gaining interest from researchers all over the world. This study is intended to utilize the Stockwell transform (ST) to investigate the classification accuracy of five different types of mental tasks. A well known electroencephalogram (EEG) database (Keirn and Aunon database) has been used in this study. Two subjects from the database were considered for the study. k-means nearest neighborhood (k-NN) and Linear Discriminant Analysis (LDA) based classifiers were used to perform a pair-wise classification of the 10 combinations of mental tasks. Two different discriminant functions such as linear and quadratic were used in LDA classifier and their effects on the classification performance are presented. The effect of different ‘k’ values (1 to 10) was also studied in kNN algorithm. Conventional and k-fold cross validation methods were used to investigate the reliability of the classification results of the classifiers. The experimental results show that the proposed method gives promising pair-wise classification accuracy from 78.80% to 100%.
机译:不同类型的心理任务的分类是一个活跃的研究领域,似乎是壮大的。该领域正在从世界各地的研究人员获得兴趣。本研究旨在利用斯托克尔变换(ST)来研究五种不同类型的心理任务的分类准确性。本研究已经使用了众所周知的脑电图(EEG)数据库(eEG)数据库(KEIRN和AUNON数据库)。研究了来自数据库的两个科目进行了研究。 K-Meast最近的邻域(K-Nn)和基于线性判别分析(LDA)的分类器用于执行精神任务的10个组合的一对分类。在LDA分类器中使用了两种不同的判别功能,例如线性和二次,并呈现了它们对分类性能的影响。在KNN算法中还研究了不同'K'值(1至10)的效果。使用常规和k折交叉验证方法来研究分类器的分类结果的可靠性。实验结果表明,该方法具有前景的一对分类精度,从78.80%到100%。

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