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Robust maximum signal fraction analysis for blind source separation

机译:可靠的最大信号分数分析,用于盲源分离

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摘要

Blind source separation (BSS) is an active research topic in the fields of biomedical signal processing and brain-computer interface. As a representative technique, maximum signal fraction analysis (MSFA) has been recently developed for the problem of BSS. However, MSFA is formulated based on the L2-norm, and thus is prone to be negatively affected by outliers. In this study, the authors propose a robust alternative to MSFA based on the L1-norm, termed as MSFA-L1. Specifically, they re-define the objective function of MSFA, in which the energy quantities of both the signal and the noise are defined with the L1-norm rather than the L2-norm. By adopting the L1-norm, MSFA-L1 alleviates the negative influence of large deviations that are usually associated with outliers. Computationally, they design an iterative algorithm to optimise the objective function of MSFA-L1. The iterative procedure is shown to converge under the framework of bound optimisation. Experimental results on both synthetic data and real biomedical data demonstrate the effectiveness of the proposed MSFA-L1 approach.
机译:盲源分离(BSS)是生物医学信号处理和脑机接口领域中一个活跃的研究主题。作为代表性技术,最近针对BSS问题开发了最大信号分数分析(MSFA)。但是,MSFA是基于L2规范制定的,因此容易受到异常值的负面影响。在这项研究中,作者提出了一种基于L1规范的MSFA的可靠替代方案,称为MSFA-L1。具体来说,它们重新定义了MSFA的目标函数,其中信号和噪声的能量均由L1-范数而不是L2-范数定义。通过采用L1范数,MSFA-L1减轻了通常与异常值相关的大偏差的负面影响。通过计算,他们设计了一种迭代算法来优化MSFA-L1的目标函数。迭代过程显示为在优化约束的框架下收敛。综合数据和实际生物医学数据的实验结果证明了所提出的MSFA-L1方法的有效性。

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