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Adaptive regularization network based neural modeling paradigm for nonlinear adaptive estimation of cerebral evoked potentials.

机译:基于自适应正则化网络的神经建模范例的神经诱发电位的非线性自适应估计。

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摘要

In this paper we report an adaptive regularization network (ARN) approach to realizing fast blind separation of cerebral evoked potentials (EPs) from background electroencephalogram (EEG) activity with no need to make any explicit assumption on the statistical (or deterministic) signal model. The ARNs are proposed to construct nonlinear EEG and EP signal models. A novel adaptive regularization training (ART) algorithm is proposed to improve the generalization performance of the ARN. Two adaptive neural modeling methods based on the ARN are developed and their implementation and performance analysis are also presented. The computer experiments using simulated and measured visual evoked potential (VEP) data have shown that the proposed ARN modeling paradigm yields computationally efficient and more accurate VEP signal estimation owing to its intrinsic model-free and nonlinear processing characteristics.
机译:在本文中,我们报告了一种自适应正则化网络(ARN)方法,可实现从背景脑电图(EEG)活动快速盲目分离脑诱发电位(EPs),而无需对统计(或确定性)信号模型进行任何明确假设。提出了ARN以构造非线性EEG和EP信号模型。提出了一种新颖的自适应正则化训练算法,以提高ARN的泛化性能。提出了两种基于ARN的自适应神经建模方法,并介绍了它们的实现和性能分析。使用模拟和测量的视觉诱发电位(VEP)数据进行的计算机实验表明,所提出的ARN建模范式由于其固有的无模型和非线性处理特性而可产生计算有效且更准确的VEP信号估计。

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