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首页> 外文期刊>Procedia - Social and Behavioral Sciences >A Remark on the Most Informative EEG Signal Components in a Super-scalable Method for Functional State Classification based on the Wavelet Decomposition
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A Remark on the Most Informative EEG Signal Components in a Super-scalable Method for Functional State Classification based on the Wavelet Decomposition

机译:基于小波分解的功能状态分类的超可扩展方法中信息量最大的脑电信号成分说明

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摘要

Technologies for automated real-time classification of functional states are essential for supervision over operators of critical infrastructure, stress resistance evaluation, functional studies of sportsmen. They also open new horizons for automated educational applications and applications for phobia therapy, especially supported by virtual reality technologies, as they allow the automated adaptation of tasks in real time. In 2012 a novel approach for the functional state automated classification based on electroencephalographic (EEG) data was introduced by E.D. Livshitz et al. The approach efficiently utilizes CDF 9/7 wavelet decomposition instead of classical Fourier analysis and provides a promising classification reliability. In this paper connections between a set of estimators that were identified as the most informative for this approach and expert knowledge used in EEG data analysis and manual functional state classification are studied. The formalization of these connections is based on a fact that in spite of substantial differences between CDF wavelets and standard trigonometric functions used in Fourier analysis wavelet-based estimators have a good localization in frequency domain.
机译:对功能状态进行自动实时分类的技术对于监督关键基础设施的运营商,抗压力评估,运动员的功能研究至关重要。他们还为自动化教育应用程序和恐惧症治疗应用程序开辟了新视野,尤其是在虚拟现实技术的支持下,因为它们允许实时自动调整任务。 E.D.在2012年提出了一种基于脑电图(EEG)数据的功能状态自动分类的新方法。 Livshitz等。该方法有效地利用了CDF 9/7小波分解而不是经典的傅立叶分析,并提供了有希望的分类可靠性。在本文中,研究了一组估计为该方法最有用的估计器与脑电数据分析和手动功能状态分类中使用的专家知识之间的联系。这些连接的形式化基于以下事实:尽管CDF小波与傅里叶分析中使用的标准三角函数之间存在实质性差异,基于小波的估计器在频域中具有良好的定位。

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