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使用与任务无关的脑电图特征进行高效的心理负荷估计。

Efficient mental workload estimation using task-independent EEG features.

作者信息

Roy R N, Charbonnier S, Campagne A, Bonnet S

机构信息

Univ. Grenoble Alpes, F-38000 Grenoble, France. CEA, LETI, MINATEC Campus, F-38054 Grenoble, France.

出版信息

J Neural Eng. 2016 Apr;13(2):026019. doi: 10.1088/1741-2560/13/2/026019. Epub 2016 Feb 15.

Abstract

OBJECTIVE

Mental workload is frequently estimated by EEG-based mental state monitoring systems. Usually, these systems use spectral markers and event-related potentials (ERPs). To our knowledge, no study has directly compared their performance for mental workload assessment, nor evaluated the stability in time of these markers and of the performance of the associated mental workload estimators.  This study proposes a comparison of two processing chains, one based on the power in five frequency bands, and one based on ERPs, both including a spatial filtering step (respectively CSP and CCA), an FLDA classification and a 10-fold cross-validation.

APPROACH

To get closer to a real life implementation, spectral markers were extracted from a short window (i.e. towards reactive systems) that did not include any motor activity and the analyzed ERPs were elicited by a task-independent probe that required a reflex-like answer (i.e. close to the ones required by dead man's vigilance devices). The data were acquired from 20 participants who performed a Sternberg memory task for 90 min (i.e. 2/6 digits to memorize) inside which a simple detection task was inserted. The results were compared both when the testing was performed at the beginning and end of the session.

MAIN RESULTS

Both chains performed significantly better than random; however the one based on the spectral markers had a low performance (60%) and was not stable in time. Conversely, the ERP-based chain gave very high results (91%) and was stable in time.

SIGNIFICANCE

This study demonstrates that an efficient and stable in time workload estimation can be achieved using task-independent spatially filtered ERPs elicited in a minimally intrusive manner.

摘要

目的

心理负荷通常由基于脑电图的心理状态监测系统进行估计。通常,这些系统使用频谱标记和事件相关电位(ERP)。据我们所知,尚无研究直接比较它们在心理负荷评估方面的性能,也未评估这些标记的时间稳定性以及相关心理负荷估计器的性能。本研究提出对两种处理链进行比较,一种基于五个频段的功率,另一种基于ERP,两者都包括空间滤波步骤(分别为CSP和CCA)、FLDA分类和10折交叉验证。

方法

为了更接近实际应用,频谱标记从一个不包括任何运动活动的短窗口(即针对反应性系统)中提取,并且分析的ERP由一个与任务无关的探针诱发,该探针需要类似反射的回答(即接近死人警惕装置所需的回答)。数据从20名参与者获取,他们在90分钟内执行了斯特恩伯格记忆任务(即记忆2/6位数字),其中插入了一个简单的检测任务。在会话开始和结束时进行测试时对结果进行了比较。

主要结果

两种处理链的表现均显著优于随机情况;然而,基于频谱标记的处理链性能较低(60%)且时间稳定性不佳。相反,基于ERP的处理链给出了非常高的结果(91%)且时间稳定。

意义

本研究表明,使用以最小侵入方式诱发的与任务无关的空间滤波ERP,可以实现高效且时间稳定的负荷估计。

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