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Feature Weight Driven Interactive Mutual Information Modeling for Heterogeneous Bio-Signal Fusion to Estimate Mental Workload

机译:特征权重驱动的交互式互信息建模用于异构生物信号融合以估算精神工作量

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摘要

Many people suffer from high mental workload which may threaten human health and cause serious accidents. Mental workload estimation is especially important for particular people such as pilots, soldiers, crew and surgeons to guarantee the safety and security. Different physiological signals have been used to estimate mental workload based on the n-back task which is capable of inducing different mental workload levels. This paper explores a feature weight driven signal fusion method and proposes interactive mutual information modeling (IMIM) to increase the mental workload classification accuracy. We used EEG and ECG signals to validate the effectiveness of the proposed method for heterogeneous bio-signal fusion. The experiment of mental workload estimation consisted of signal recording, artifact removal, feature extraction, feature weight calculation, and classification. Ten subjects were invited to take part in easy, medium and hard tasks for the collection of EEG and ECG signals in different mental workload levels. Therefore, heterogeneous physiological signals of different mental workload states were available for classification. Experiments reveal that ECG can be utilized as a supplement of EEG to optimize the fusion model and improve mental workload estimation. Classification results show that the proposed bio-signal fusion method IMIM can increase the classification accuracy in both feature level and classifier level fusion. This study indicates that multi-modal signal fusion is promising to identify the mental workload levels and the fusion strategy has potential application of mental workload estimation in cognitive activities during daily life.
机译:许多人承受着很高的精神负担,这可能威胁人类健康并造成严重事故。精神工作量估计对于飞行员,士兵,机组人员和外科医生等特定人员尤其重要,以确保安全性。已经基于n-back任务使用了不同的生理信号来估计心理负荷,该n-back任务能够引起不同的心理负荷水平。本文探讨了一种特征权重驱动的信号融合方法,并提出了交互式互信息建模(IMIM)以提高心理工作量分类的准确性。我们使用脑电图和心电图信号来验证所提出的方法对于异质生物信号融合的有效性。心理工作量估计的实验包括信号记录,伪影去除,特征提取,特征权重计算和分类。邀请十名受试者参加简单,中等和艰巨的任务,以收集不同精神负荷水平的脑电图和心电图信号。因此,不同精神工作量状态的异构生理信号可用于分类。实验表明,心电图可以用作脑电图的补充,以优化融合模型并改善心理负荷估算。分类结果表明,提出的生物信号融合方法IMIM可以同时提高特征级和分类器级融合的分类精度。这项研究表明,多模式信号融合有望用于确定心理负荷水平,并且该融合策略在日常生活中的认知活动中具有潜在的心理负荷估算应用。

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