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Performance Comparison of Automated EEG Enhancement Algorithms for Mental Workload Assessment of Ambulant Users

机译:自动脑电图增强算法的性能比较守护用户的心理工作量评估

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Mental workload (MW) assessment is important for numerous mentally-demanding applications, including first responders, air traffic control, amongst others, as it quantifies the cognitive capabilities of the operator. Recently, there has been a push for wearables based MW monitoring for real-time feedback and human performance augmentation. Most previous studies have focused on immobile subjects. Realistic applications, however, rely on ambulant users under varying types and levels of physical activity. Movement artifacts are known to hamper the quality of signals measured by wearable devices, thus the impact on MW assessment in situ is still unknown. In this study, we compare the performance of several automated artifact removal algorithms for electroencephalograms (EEG), as well as the robustness of two classical feature sets, for MW assessment under varying physical activity levels.
机译:心理工作量(MW)评估对于许多精神要求的应用是重要的,包括第一个受访者,空中交通管制,其中包括定量运营商的认知能力。最近,已经推动了基于可穿戴的MW监测,以进行实时反馈和人类性能增强。以前的大多数研究都集中在Immobile受试者身上。然而,现实的应用依赖于不同类型和身体活动水平的驻守用户。已知运动伪影妨碍通过可穿戴设备测量的信号质量,因此对原位的MW评估的影响仍然未知。在这项研究中,我们比较用于脑电图(EEG)的若干自动伪影去除算法的性能,以及两个经典特征集的鲁棒性,用于不同的物理活动水平下的MW评估。

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