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A robust approach to independent component analysis of signals with high-level noise measurements

机译:一种采用高电平噪声测量的信号独立成分分析的可靠方法

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摘要

We propose a robust approach for independent component analysis (ICA) of signals where observations are contaminated with high-level additive noise and/or outliers. The source signals may contain mixtures of both sub-Gaussian and super-Gaussian components, and the number of sources is unknown. Our robust approach includes two procedures. In the first procedure, a robust prewhitening technique is used to reduce the power of additive noise, the dimensionality and the correlation among sources. A cross-validation technique is introduced to estimate the number of sources in this first procedure. In the second procedure, a nonlinear function is derived using the parameterized t-distribution density model. This nonlinear function is robust against the undue influence of outliers fundamentally. Moreover, the stability of the proposed algorithm and the robust property of misestimating the parameters (kurtosis) have been studied. By combining the t-distribution model with a family of light-tailed distributions (sub-Gaussian) model, we can separate the mixture of sub-Gaussian and super-Gaussian source components. Through the analysis of artificially synthesized data and real-world magnetoencephalographic (MEG) data, we illustrate the efficacy of this robust approach.
机译:我们为信号的独立分量分析(ICA)提出了一种健壮的方法,在这种情况下,观测值被高水平相加噪声和/或离群值所污染。源信号可能包含次高斯分量和超高斯分量的混合信号,并且源的数量未知。我们强大的方法包括两个过程。在第一个过程中,使用了鲁棒的预白化技术来降低附加噪声的功率,维数和源之间的相关性。引入交叉验证技术以估计此第一个过程中的来源数量。在第二个过程中,使用参数化的t分布密度模型导出非线性函数。该非线性函数从根本上抵抗了异常值的不当影响。此外,还研究了所提算法的稳定性和错误估计参数(峰度)的鲁棒性。通过将t分布模型与一系列轻尾分布模型(次高斯模型)结合起来,我们可以分离次高斯源分量和超高斯源分量的混合。通过分析人工合成的数据和现实世界的脑磁图(MEG)数据,我们说明了这种鲁棒方法的有效性。

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