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Blind noise reduction for multisensory signals using ICA and subspace filtering, with application to EEG analysis

机译:使用ICA和子空间滤波的多传感器信号盲降噪技术,应用于脑电图分析

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摘要

In many applications of signal processing, especially in communications and biomedicine, preprocessing is necessary to remove noise from data recorded by multiple sensors. Typically, each sensor or electrode measures the noisy mixture of original source signals. In this paper a noise reduction technique using independent component analysis (ICA) and subspace filtering is presented. In this approach we apply subspace filtering not to the observed raw data but to a demixed version of these data obtained by ICA. Finite impulse response filters are employed whose vectors are parameters estimated based on signal subspace extraction. ICA allows us to filter independent components. After the noise is removed we reconstruct the enhanced independent components to obtain clean original signals; i.e., we project the data to sensor level. Simulations as well as real application results for EEG-signal noise elimination are included to show the validity and effectiveness of the proposed approach. [References: 29]
机译:在信号处理的许多应用中,尤其是在通信和生物医学中,需要进行预处理以消除多个传感器记录的数据中的噪声。通常,每个传感器或电极都测量原始信号的噪声混合。本文提出了一种使用独立分量分析(ICA)和子空间滤波的降噪技术。在这种方法中,我们不将子空间过滤应用于观察到的原始数据,而是应用于由ICA获得的这些数据的混合版本。使用有限冲激响应滤波器,其矢量是基于信号子空间提取估计的参数。 ICA允许我们过滤独立的组件。噪声消除后,我们重构增强的独立分量以获得干净的原始信号。也就是说,我们将数据投影到传感器级别。仿真结果和实际应用结果表明,该方法能有效地消除脑电信号噪声。 [参考:29]

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