Tensor Decomposition of Non-EEG Physiological Signals for Visualization and Recognition of Human Stress

Thi T.T. Pham, Héctor Rodriguez Déniz, T. Pham
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引用次数: 3

Abstract

Recognition of physical and mental responses to stress is important for the purpose of stress management to reduce its negative effects in health. Wearable technology, mainly using electroencephalogram (EEG), provides information such as tracking fitness activity, disease detection, and neurological states of individuals. However, the recording of EEG signals from a wearable device is inconvenient. This study introduces the application of tensor decomposition of non-EEG data for visualizing and tracking neurological status with implication to human stress recognition. Results obtained from testing the proposed method using a PhyioNet database show visualizations that can well separate four groups of neurological statuses obtained from twenty healthy subjects, and very high up to 100% classification of the neurological statuses. The investigation suggests the potential application of tensor decomposition for the analysis of physiological measurements collected from multiple sensors. The proposed study can significantly contribute to the advancement of wearable technology for human stress monitoring.
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基于张量分解的非脑电图生理信号可视化与识别
认识到身体和精神对压力的反应对于压力管理的目的很重要,以减少其对健康的负面影响。可穿戴技术主要使用脑电图(EEG),提供诸如跟踪健身活动、疾病检测和个体神经状态等信息。然而,从可穿戴设备记录脑电图信号是不方便的。本研究介绍了非脑电图数据的张量分解在神经状态可视化和跟踪中的应用,并对人类应激识别有一定的指导意义。使用PhyioNet数据库对所提出的方法进行测试的结果显示,可视化可以很好地区分从20名健康受试者中获得的四组神经状态,并且神经状态的分类率高达100%。该研究表明了张量分解在分析从多个传感器收集的生理测量数据方面的潜在应用。提出的研究可以显著促进可穿戴技术的进步,用于人体压力监测。
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