认知负荷监测的深度学习:比较评价

Andrea Salfinger
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引用次数: 4

摘要

在UbiTtention 2020研讨会上组织的认知负荷监测挑战向研究界提出了一个问题,即从低成本可穿戴设备记录的生理测量中推断用户的认知负荷。由于这些生理特征的主观性质,这是具有挑战性的:与涉及物理现象客观测量的相关问题(例如,智能手机传感器的活动识别)相比,认知负荷下受试者的生理反应模式可能是高度个体的,即暴露出显着的受试者间差异。然而,在实验室环境中编译的数据集上训练的模型在应用于来自新对象的测量时也应该提供准确的分类。在这项工作中,我们研究了建立的深度学习模型对时间序列分类的适用性。我们研究了不同类型的数据规范化,并研究了数据增强的一种变体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning for cognitive load monitoring: a comparative evaluation
The Cognitive Load Monitoring Challenge organized in the UbiTtention 2020 workshop tasked the research community with the problem of inferring a user's cognitive load from physiological measurements recorded by a low-cost wearable. This is challenging due to the subjective nature of these physiological characteristics: In contrast to related problems involving objective measurements of physical phenomena (e.g., Activity Recognition from smartphone sensors), subjects' physiological response patterns under cognitive load may be highly individual, i.e., expose significant inter-subject variance. However, models trained on datasets compiled in laboratory settings should also deliver accurate classifications when applied to measurements from novel subjects. In this work, we study the applicability of established Deep Learning models for time series classification on this challenging problem. We examine different kinds of data normalization and investigate a variant of data augmentation.
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