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Noise Removal of Functional Near Infrared Spectroscopy Signals Using Emperical Mode Decomposition and Independent Component Analysis

机译:使用经验模式分解和独立分量分析噪声去除功能近红外光谱信号

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Currently, researchers are getting more interests in discovering brain activities by non-invasive methods of using functional near-infrared spectroscopy (fNIRS). However, fNIRS collected signals usually contain noises which significantly affect the measurement of fNIRS experiments. There have been available methods proposed to remove artifacts of fNIRS signals. Among those approaches, adaptive filers are effective to mitigate physiological noises measured by extra sensors. However, the use of sensors attached on the human subjects during fNIRS measurement is uncomfortable for a user and is complicated for setup. Therefore, the method to extract the physiological signals automatically from fNIRS signals without the needs of other sensors is getting more attention from research community. In this work, we propose the combination of emperical mode decomposition (EMD) method and independent component analysis (ICA) to extract the heart rate signal. EMD is the fundamental part of Hilbert-Huang transform which is used to decompose signal into intrinsic mode functions that are not set analytically and are instead determined by an analyzed sequence alone. ICA uses Hyvarinen's fixed-point algorithm to estimate the independent components from given multidimensional signals. Our proposed approach is able to extract the heart rate signal from multiple fNIRS channels with the accuracy of 80-90% compared with the one measured from the real device. Our further work will integrate this result with noise attenuation using adaptive filters to mitigate the global inference of physiological activities to fNIRS measurement.
机译:目前,研究人员通过使用功能近红外光谱(FNIR)的非侵入性方法来发现大脑活动的兴趣更大。然而,FNIR收集的信号通常含有显着影响FNIR实验的测量的噪声。已经有可能提出的方法去除FNIRS信号的伪影。在这些方法中,自适应文件器有效地减轻额外传感器测量的生理噪声。然而,在FNIRS测量期间使用附着在人类受试者上的传感器对用户感到不舒服并且对于设置并发。因此,从Fnirs信号中自动提取生理信号的方法,而不需要其他传感器的需求正在得到研究界的更多关注。在这项工作中,我们提出了初步模式分解(EMD)方法和独立分量分析(ICA)的组合来提取心率信号。 EMD是Hilbert-Huang变换的基本部分,用于将信号分解为内在模式功能,该功能在没有分析的内部模式功能,而是由单独的分析的序列确定。 ICA使用Hyvarinen的定点算法来估计来自给定的多维信号的独立组件。我们所提出的方法能够从多个FNIRS通道中提取心率信号,与真实装置测量的镜子相比,精度为80-90%。我们的进一步工作将使用自适应滤波器将此结果与噪声衰减集成,以减轻生理活动的全局引用到FNIR测量。

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