Parameter estimation and multichannel fusion for classifying averaged ERPs

L. Gupta, J. Phegley, D. Molfese
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引用次数: 0

Abstract

A parameter estimation and classification fusion approach is developed to classify averaged event-related potentials (ERPs) recorded from multiple channels. It is shown that the parameters of the averaged ERP ensemble can be estimated directly from the parameters of the single-trial ensemble. The parameter estimation methods are applied to independently design a Gaussian likelihood ratio classifier for each channel. A fusion rule is formulated to classify an ERP using the classification results from all the channels. Very importantly, it is shown that parametric classifiers can be designed and evaluated without having to collect a prohibitively large number of single-trial ERPs. It is also shown that the performance of a majority rule fusion classifier is consistently superior to the rule that selects a single best channel.
基于参数估计和多通道融合的平均erp分类
提出了一种参数估计和分类融合方法,对多通道记录的平均事件相关电位进行分类。结果表明,平均ERP集合的参数可以直接由单次试验集合的参数估计出来。采用参数估计方法为每个通道独立设计高斯似然比分类器。建立了一个融合规则,利用所有通道的分类结果对ERP进行分类。非常重要的是,它表明参数分类器可以设计和评估,而不必收集大量的单次试验erp。研究还表明,多数规则融合分类器的性能始终优于选择单个最佳信道的规则。
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