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A robust extraction algorithm for biomedical signals from noisy mixtures 被引量:2

A robust extraction algorithm for biomedical signals from noisy mixtures
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摘要 Blind source extraction (BSE) is widely used to solve signal mixture problems where there are only a few desired signals. To improve signal extraction performance and expand its application, we develop an adaptive BSE algorithm with an additive noise model. We first present an improved normalized kurtosis as an objective function, which caters for the effect of noise. By combining the objective function and Lagrange multiplier method, we further propose a robust algorithm that can extract the desired signal as the first output signal. Simulations on both synthetic and real biomedical signals demonstrate that such combination improves the extrac- tion performance and has better robustness to the estimation error of normalized kurtosis value in the presence of noise. Blind source extraction (BSE) is widely used to solve signal mixture problems where there are only a few desired signals. To improve signal extraction performance and expand its application, we develop an adaptive BSE algorithm with an additive noise model. We first present an improved normalized kurtosis as an objective function, which caters for the effect of noise. By combining the objective function and Lagrange multiplier method, we further propose a robust algorithm that can extract the desired signal as the first output signal. Simulations on both synthetic and real biomedical signals demonstrate that such combination improves the extrac- tion performance and has better robustness to the estimation error of normalized kurtosis value in the presence of noise.
出处 《Frontiers of Computer Science》 SCIE EI CSCD 2011年第4期387-394,共8页 中国计算机科学前沿(英文版)
关键词 blind source extraction (BSE) normalizedkurtosis objective function biomedical signal Lagrangemultiplier method blind source extraction (BSE), normalizedkurtosis, objective function, biomedical signal, Lagrangemultiplier method
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