毫米压力

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Kun Liang, Anfu Zhou, Zhan Zhang, Hao Zhou, Huadong Ma, Chenshu Wu
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引用次数: 0

摘要

长期暴露在压力下会损害人的精神甚至身体健康,压力监测在精神疾病和慢性疾病的预防、诊断和管理中具有越来越重要的意义。然而,目前的应力监测方法要么是繁琐的,要么是侵入性的,这阻碍了它们在实践中的广泛应用。在本文中,我们提出了mmStress,这是一种非接触式和非侵入式的解决方案,它采用毫米波雷达来感知受试者的日常生活活动,从中提取人类的压力。mmStress是建立在人类压力和“位移活动”之间的心理学验证关系之上的,即处于压力下的受试者无意识地做出坐立不安的行为,如抓挠、徘徊、跺脚等。尽管概念简单,但要实现mmStress,关键挑战在于如何自主识别和量化潜在位移活动,因为它们通常是短暂的,淹没在正常的日常活动中,并且在不同的受试者中表现出很大的差异。为了应对这些挑战,我们定制设计了一个神经网络,从宏观和微观时间尺度上学习人类活动,并利用人类活动的连续性来准确提取异常位移活动的特征。此外,我们还通过在模型训练期间纳入事后逻辑调整程序来解决不平衡应力分布问题。我们在10个志愿者的公寓中对mmStress进行了4周多的原型、部署和评估,结果表明mmStress对低、中、高压力的分类准确率达到了80%左右。特别是,mmStress显示出优势,特别是在人类自由运动的情况下,它推进了准静态情况下压力监测的最新技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
mmStress
Long-term exposure to stress hurts human's mental and even physical health,and stress monitoring is of increasing significance in the prevention, diagnosis, and management of mental illness and chronic disease. However, current stress monitoring methods are either burdensome or intrusive, which hinders their widespread usage in practice. In this paper, we propose mmStress, a contact-less and non-intrusive solution, which adopts a millimeter-wave radar to sense a subject's activities of daily living, from which it distills human stress. mmStress is built upon the psychologically-validated relationship between human stress and "displacement activities", i.e., subjects under stress unconsciously perform fidgeting behaviors like scratching, wandering around, tapping foot, etc. Despite the conceptual simplicity, to realize mmStress, the key challenge lies in how to identify and quantify the latent displacement activities autonomously, as they are usually transitory and submerged in normal daily activities, and also exhibit high variation across different subjects. To address these challenges, we custom-design a neural network that learns human activities from both macro and micro timescales and exploits the continuity of human activities to extract features of abnormal displacement activities accurately. Moreover, we also address the unbalance stress distribution issue by incorporating a post-hoc logit adjustment procedure during model training. We prototype, deploy and evaluate mmStress in ten volunteers' apartments for over four weeks, and the results show that mmStress achieves a promising accuracy of ~80% in classifying low, medium and high stress. In particular, mmStress manifests advantages, particularly under free human movement scenarios, which advances the state-of-the-art that focuses on stress monitoring in quasi-static scenarios.
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
自引率
0.00%
发文量
154
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