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Adaptive filtering of evoked potentials with radial-basis-function neural network prefilter

机译:基于径向基函数神经网络预滤波器的诱发电位自适应滤波

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摘要

Evoked potentials (EPs) are time-varying signals typically buried in relatively large background noise. To extract the EP more effectively from noise, we had previously developed an approach using an adaptive signal enhancer (ASE) (Chen et al., 1995). ASE requires a proper reference input signal for its optimal performance. Ensemble- and moving window-averages were formerly used with good results. In this paper, we present a new method to provide even more effective reference inputs for the ASE. Specifically, a Gaussian radial basis function neural network (RBFNN) was used to preprocess raw EP signals before serving as the reference input. Since the RBFNN has built-in nonlinear activation functions that enable it to closely fit any function mapping, the output of RBFNN can effectively track the signal variations of EP. Results confirmed the superior performance of ASE with RBFNN over the previous method.
机译:诱发电位(EPs)是随时间变化的信号,通常掩埋在相对较大的背景噪声中。为了更有效地从噪声中提取EP,我们之前已经开发出一种使用自适应信号增强器(ASE)的方法(Chen等,1995)。 ASE需要适当的参考输入信号以实现最佳性能。以前使用了合奏和移动窗口平均值,效果很好。在本文中,我们提出了一种为ASE提供更有效参考输入的新方法。具体而言,在用作参考输入之前,使用了高斯径向基函数神经网络(RBFNN)预处理原始EP信号。由于RBFNN具有内置的非线性激活函数,使其能够紧密拟合任何函数映射,因此RBFNN的输出可以有效地跟踪EP的信号变化。结果证实了带有RBFNN的ASE性能优于以前的方法。

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