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FBDM based time-frequency representation for sleep stages classification using EEG signals

机译:基于FBDM的睡眠阶段的时频表示使用eEG信号进行分类

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摘要

In this paper, we have proposed a new method of time-frequency representation (TFR) which is based on the Fourier-Bessel decomposition method (FBDM). This proposed method is an advanced version of the existing Fourier decomposition method (FDM). The proposed method decomposes the non-stationary signal into a finite number of Fourier-Bessel intrinsic band functions (FBIBFs). The FBIBFs are the real parts of analytic FBIBFs (AFBIBFs) which are obtained from an analytic signal during frequency scanning (FS) operations. The Hilbert transform (HT) is used to generate an analytic signal from the Fourier-Bessel series (FBS) expansion of an arbitrary signal. In addition to FBDM, we have also proposed zero-phase filter-bank based FBDM in order to get fix number of FBIBFs in this work. The performance of the proposed FBDM has been evaluated with the help of Poverall measure and TFR analysis of synthesized signals. The experimental results and performance measures show that the proposed FBDM is more capable for analysis of non-stationary multi-component signals such as linear frequency modulated and nonlinear frequency modulated signals as compared to the existing methods. The developed FBDM has also been used for the classification of six different sleep stages using electroencephalogram (EEG) signals. The convolutional neural network (CNN) classifier has been utilized for the classification of TFR images, which were obtained with the application of FBDM on a publicly available sleep EEG signals database. The developed classification system has achieved 91.90% classification accuracy for the classification of six different sleep stages using EEG signals.
机译:在本文中,我们提出了一种新的时频表示方法(TFR),其基于傅立叶贝塞尔分解方法(FBDM)。这种提出的方​​法是现有傅里叶分解方法(FDM)的高级版本。该方法将非静止信号分解成有限数量的傅立叶贝塞尔内在频带功能(FBIBFS)。 FBIBFS是分析FBIBFS(AFBIBFS)的实际部分,其从频率扫描(FS)操作期间的分析信号获得。 Hilbert变换(HT)用于从傅立叶贝塞尔系列(FBS)扩展的任意信号产生分析信号。除了FBDM之外,我们还提出了基于零阶段的滤波器组的FBDM,以便在这项工作中获得FBIBF的数量。拟议的FBDM的性能已经通过佩帕的测量和合成信号的TFR分析评估。实验结果和性能措施表明,与现有方法相比,所提出的FBDM更能分析非静止多分量信号,例如线性频率调制和非线性频率调制信号。开发的FBDM也使用脑电图(EEG)信号用于分类六种不同的睡眠阶段。卷积神经网络(CNN)分类器已用于TFR图像的分类,其在公开可用的睡眠EEG信号数据库上应用FBDM获得。开发的分类系统使用EEG信号实现了六种不同睡眠阶段的分类准确度。

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