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首页> 外文期刊>Metrology and Measurement Systems: Metrologia i Systemy Pomiarowe >CLASSIFICATION OF EEG SIGNALS USING ADAPTIVE TIME-FREQUENCY DISTRIBUTIONS
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CLASSIFICATION OF EEG SIGNALS USING ADAPTIVE TIME-FREQUENCY DISTRIBUTIONS

机译:利用自适应时频分布对脑电信号进行分类

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Time-Frequency (t-f) distributions are frequently employed for analysis of new-born EEG signals because of their non-stationary characteristics. Most of the existing time-frequency distributions fail to concentrate energy for a multicomponent signal having multiple directions of energy distribution in the t-f domain. In order to analyse such signals, we propose an Adaptive Directional Time-Frequency Distribution (ADTFD). The ADTFD outperforms other adaptive kernel and fixed kernel TFDs in terms of its ability to achieve high resolution for EEG seizure signals. It is also shown that the ADTFD can be used to define new time-frequency features that can lead to better classification of EEG signals, e.g. the use of the ADTFD leads to 97.5% total accuracy, which is by 2% more than the results achieved by the other methods. (C) 2016 Polish Academy of Sciences. All rights reserved
机译:时频(t-f)分布因其非平稳特性而经常用于分析新生儿EEG信号。现有的大多数时频分布都无法将能量集中在t-f域中具有多个能量分布方向的多分量信号上。为了分析此类信号,我们提出了一种自适应定向时频分布(ADTFD)。就实现EEG癫痫发作信号的高分辨率而言,ADTFD优于其他自适应内核和固定内核TFD。还表明,ADDFD可用于定义新的时频特征,这些特征可导致对EEG信号进行更好的分类,例如,使用ADTFD可以达到97.5%的总准确度,比其他方法获得的结果高2%。 (C)2016波兰科学院。版权所有

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