首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Adaptive filtering of evoked potentials using higher-order adaptive signal enhancer with genetic-type variable step-size prefilter.
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Adaptive filtering of evoked potentials using higher-order adaptive signal enhancer with genetic-type variable step-size prefilter.

机译:使用具有遗传类型的可变步长预滤波器的高阶自适应信号增强器对诱发电位进行自适应滤波。

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摘要

An adaptive signal enhancer based on third-order statistics with a genetic-type, variable step-size prefilter is introduced to recover evoked potentials (EPs). EPs are usually embedded in the ongoing electroencephalogram with a very low signal-to-noise ratio (SNR). As a higher-order statistics technique has a natural tolerance to Gaussian noise, it is applicable for filtering EPs. An adaptive signal enhancer based on third-order statistics was used as the major filter in this study. However, the efficiency of the adaptive signal enhancer was reduced when the total power of uncorrelated noises was large. To improve the performance for EPs under poor SNR, a low-noise signal is required. Therefore a prefilter with a genetic-type, variable step-size algorithm was employed to enhance the SNR of the signal in this study. The fundamental idea of a genetic-type, variable step-size algorithm is that its step-sizes are regularly readjusted to optimum. Therefore this algorithm can be used as a prefilter with different noise levels. Experimental results showed that, for filtering EPs, the proposed scheme is superior to the adaptive signal enhancer with a normalised least mean square algorithm.
机译:引入了一种基于三阶统计量的自适应信号增强器,该信号增强器具有遗传类型,可变步长的预滤波器,用于恢复诱发电位(EPs)。 EP通常以极低的信噪比(SNR)嵌入正在进行的脑电图中。由于高阶统计技术对高斯噪声具有自然的容忍度,因此可用于过滤EP。基于三阶统计量的自适应信号增强器被用作本研究的主要滤波器。但是,当不相关噪声的总功率较大时,自适应信号增强器的效率会降低。为了改善SNR较低时EP的性能,需要低噪声信号。因此,在本研究中,采用具有遗传类型,可变步长算法的预滤波器来增强信号的SNR。遗传类型的可变步长算法的基本思想是定期调整步长以使其达到最佳状态。因此,该算法可用作具有不同噪声水平的预滤波器。实验结果表明,对于滤波EP,该方案优于采用归一化最小均方算法的自适应信号增强器。

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