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Channel Selection and Feature Projection for Cognitive Load Estimation Using Ambulatory EEG

机译:动态脑电图用于认知负荷估计的通道选择和特征投影

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摘要

We present an ambulatory cognitive state classification system to assess the subject's mental load based on EEG measurements. The ambulatory cognitive state estimator is utilized in the context of a real-time augmented cognition (AugCog) system that aims to enhance the cognitive performance of a human user through computer-mediated assistance based on assessments of cognitive states using physiological signals including, but not limited to, EEG. This paper focuses particularly on the offline channel selection and feature projection phases of the design and aims to present mutual-information-based techniques that use a simple sample estimator for this quantity. Analyses conducted on data collected from 3 subjects performing 2 tasks (n-back/Larson) at 2 difficulty levels (low/high) demonstrate that the proposed mutual-information-based dimensionality reduction scheme can achieve up to 94% cognitive load estimation accuracy.
机译:我们提出了一种动态认知状态分类系统,以基于EEG测量来评估受试者的精神负荷。动态认知状态估计器用于实时增强认知(AugCog)系统,该系统旨在通过基于生理信号的认知状态评估(包括但不限于计算机评估)通过计算机介导的帮助来增强人类用户的认知性能仅限于脑电图。本文特别关注设计的离线通道选择和特征投影阶段,并旨在介绍基于互信息的技术,该技术使用一个简单的样本估计量。对从3个以2个难度级别(低/高)执行2个任务(n-back / Larson)的受试者收集的数据进行的分析表明,提出的基于互信息的降维方案可以实现高达94%的认知负荷估计精度。

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