多模态生理同步作为注意力投入的测量

I. Stuldreher
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引用次数: 3

摘要

当对监测注意力投入感兴趣时,生理信号可能很有价值。一种流行的方法是使用监督学习模型来揭示生理信号和注意力投入之间的复杂模式,但通常不清楚哪种生理测量方法可以最好地用于此类模型,并且收集足够的训练数据并使用可靠的基本事实来训练此类模型非常具有挑战性。与其在训练模型中使用个体参与者的生理反应和特定事件,还可以连续确定多个个体的生理测量均匀变化的程度,通常称为生理同步性。由于已有文献指出大脑活动的生理同步性与注意力投入之间存在直接的正比关系,因此不需要经过训练的模型将两者联系起来。我的目标是通过将脑电图(EEG)、皮电活动(EDA)和心率结合到生理同步的多模态度量中,创建一种更强大的个体群体注意力投入的测量方法。在目前的研究计划中,我提出了三个主要的研究问题:1)中枢和周围神经系统生理测量的生理同步性如何与注意参与相关?2)生理同步是否可靠地反映了现实世界用例中的共同注意力投入?3)如何将这些生理测量融合在一起,以获得优于单峰同步的多模态生理同步度量?
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Physiological Synchrony as Measure of Attentional Engagement
When interested in monitoring attentional engagement, physiological signals can be of great value. A popular approach is to uncover the complex patterns between physiological signals and attentional engagement using supervised learning models, but it is often unclear which physiological measures can best be used in such models and collecting enough training data with a reliable ground-truth to train such model is very challenging. Rather than using physiological responses of individual participants and specific events in a trained model, one can also continuously determine the degree to which physiological measures of multiple individuals uniformly change, often referred to as physiological synchrony. As a directly proportional relation between physiological synchrony in brain activity and attentional engagement has been pointed out in the literature, no trained model is needed to link the two. I aim to create a more robust measure of attentional engagement among groups of individuals by combining electroencephalography (EEG), electrodermal activity (EDA) and heart rate into a multimodal metric of physiological synchrony. I formulate three main research questions in the current research proposal: 1) How do physiological synchrony in physiological measures from the central and peripheral nervous system relate to attentional engagement? 2) Does physiological synchrony reliably reflect shared attentional engagement in real-world use-cases? 3) How can these physiological measures be fused to obtain a multimodal metric of physiological synchrony that outperforms unimodal synchrony?
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