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Evaluation of methods for estimating fractal dimension in motor imagery-based brain computer interface

机译:基于运动图像的脑计算机接口中分形维数估计方法的评估

摘要

A brain computer interface BCI enables direct communication between a brain and a computer translating brain activity into computer commands using preprocessing, feature extraction, and classification operations. Feature extraction is crucial, as it has a substantial effect on the classification accuracy and speed. While fractal dimension has been successfully used in various domains to characterize data exhibiting fractal properties, its usage in motor imagery-based BCI has been more recent. In this study, commonly used fractal dimension estimation methods to characterize time series Katz's method, Higuchi's method, rescaled range method, and Renyi's entropy were evaluated for feature extraction in motor imagery-based BCI by conducting offline analyses of a two class motor imagery dataset. Different classifiers fuzzy k-nearest neighbours FKNN, support vector machine, and linear discriminant analysis were tested in combination with these methods to determine the methodology with the best performance. This methodology was then modified by implementing the time-dependent fractal dimension TDFD, differential fractal dimension, and differential signals methods to determine if the results could be further improved. Katz's method with FKNN resulted in the highest classification accuracy of 85, and further improvements by 3 were achieved by implementing the TDFD method.
机译:大脑计算机接口BCI使大脑与计算机之间能够进行直接通信,从而使用预处理,特征提取和分类操作将大脑活动转化为计算机命令。特征提取至关重要,因为它对分类的准确性和速度有重大影响。尽管分形维数已成功用于各个领域以表征表现分形特性的数据,但它在基于运动图像的BCI中的使用却越来越新。在这项研究中,通过对两类运动图像数据集进行离线分析,评估了常用的分形维数估计方法来表征时间序列的Katz方法,Higuchi方法,重定范围方法和Renyi熵,以基于运动图像的BCI中的特征提取进行评估。结合这些方法测试了不同的分类器模糊k最近邻FKNN,支持向量机和线性判别分析,以确定性能最佳的方法。然后通过实现时间相关的分形维数TDFD,差分分形维数和差分信号方法来确定是否可以进一步改善结果,从而对该方法进行了修改。带有FKNN的Katz方法的最高分类精度为85,通过实施TDFD方法,进一步提高了3。

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