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A Fusion Feature for Enhancing the Performance of Classification in Working Memory Load With Single-Trial Detection

机译:一种通过单次尝试检测增强工作记忆负荷中的分类性能的融合功能

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摘要

In traditional brain-computer interfaces (BCIs), using only a certain type of feature or a simple mixture of different features cannot meet the requirements for high performance in classification. Moreover, a simple mixture of various features might lead to information redundancies and thus increase the computational complexity. In this paper, we studied the feasibility of integrating two kinds of features, which showed opposite variation trends as the memory load levels increase, into a single fusion feature. We also proposed a feature fusion framework based on non-invasive electroencephalography to classify the memory load levels and estimate the workload for a series of challenging working memory (WM) tasks (involving delayed match-to-sample tasks) on a single-trial basis. A novel fusion feature called spectral entropy/Lempel-Ziv complexity (SEn/LZC) was proposed to classify three memory load levels. The results showed that the generalization of the support vector machine (SVM) with SEn/LZC was significantly higher than the generalization of an SVM with four other types of feature, namely SEn, LZC, SEn&LZC and LZC/SEn. The findings suggested that the proposed fusion feature could act as a biomarker to successfully distinguish different load levels and that the constructed framework could achieve consistency between optimal cognitive performance and fusion features. In addition, the proposed fusion framework could provide a new method of successfully promoting the classification generalization of BCI and implicitly evaluating the mental workload.
机译:在传统的脑机接口(BCI)中,仅使用某种类型的功能或不同功能的简单混合不能满足高性能分类的要求。此外,各种特征的简单混合可能导致信息冗余,从而增加了计算复杂性。在本文中,我们研究了将两种功能集成到单个融合功能中的可行性,这两种功能随着内存负载水平的增加而显示出相反的变化趋势。我们还提出了一种基于非侵入性脑电图的特征融合框架,以在一次试验中对内存负荷水平进行分类,并估算一系列具有挑战性的工作记忆(WM)任务(涉及延迟的匹配样本任务)的工作量。提出了一种新的融合特征,称为频谱熵/ Lempel-Ziv复杂度(SEn / LZC),用于对三个内存负载级别进行分类。结果表明,使用SEn / LZC的支持向量机(SVM)的推广明显高于具有SEn,LZC,SEn&LZC和LZC / SEn四种其他特征的SVM的推广。这些发现表明,所提出的融合特征可以充当成功区分不同负荷水平的生物标记,并且所构建的框架可以实现最佳认知表现与融合特征之间的一致性。此外,所提出的融合框架可以提供一种成功地促进BCI分类归纳并隐式评估心理工作量的新方法。

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