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Generating a fuzzy rule-based brain-state-drift detector by riemann-metric-based clustering

机译:通过基于黎曼度量的聚类生成基于模糊规则的脑状态漂移检测器

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Brain-state drifts could significantly impact on the performance of machine-learning algorithms in brain computer interface (BCI). However, less is understood with regard to how brain transition states influence a model and how it can be represented for a system. Herein we are interested in the hidden information of brain state-drift occurring in both simulated and real-world human-system interaction. This research introduced the Riemann metric to categorize EEG data, and visualized the clustering result so that the distribution of the data can be observable. Moreover, to defeat subjective uncertainty of electroencephalography (EEG) signals, fuzzy theory was employed. In this study, we built a fuzzy rule-based brain-state-drift detector to observe the brain state and imported data from different subjects to testify the performance. The result of the detection is acceptable and shown in this paper. In the future, we expect that brain-state drifting can be connected with human behaviors via the proposed fuzzy rule-based classification. We also will develop a new structure for a fuzzy rule-based brain-state-drift detector to improve the detection accuracy.
机译:脑状态漂移可能会严重影响脑计算机接口(BCI)中机器学习算法的性能。但是,关于大脑过渡状态如何影响模型以及如何为系统表示模型的了解很少。在这里,我们对在模拟的和真实的人机交互中发生的大脑状态漂移的隐藏信息感兴趣。这项研究引入了Riemann度量对EEG数据进行分类,并对聚类结果进行可视化,以便可以观察到数据的分布。此外,为克服脑电图(EEG)信号的主观不确定性,采用了模糊理论。在这项研究中,我们建立了一个基于模糊规则的脑状态漂移检测器来观察脑状态,并从不同对象中导入数据以证明其性能。检测结果是可以接受的,并在本文中显示。未来,我们期望通过提出的基于模糊规则的分类,可以将脑状态漂移与人类行为联系起来。我们还将为基于模糊规则的脑状态漂移检测器开发新的结构,以提高检测精度。

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