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Study of stress detection and proposal of stress-related features using commercial-off-the-shelf wrist wearables

机译:使用现成的手腕可穿戴设备进行压力检测的研究和应力相关特征的建议

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This paper discusses the possibility of detecting personal stress making use of popular wearable devices available in the market. Different instruments found in the literature to measure stress-related features are reviewed, distinguishing between subjective tests and mechanisms supported by the analysis of physiological signals from clinical devices. Taking them as a reference, a solution to estimate stress based on the use of commercial-off-the-shelf wrist wearables and machine learning techniques is described. A mobile app was developed to induce stress in a uniform and systematic way. The app implements well-known stress inducers, such as the Paced Auditory Serial Addition Test, the Stroop Color-Word Interference Test, and a hyperventilation activity. Wearables are used to collect physiological data used to train classifiers that provide estimations on personal stress levels. The solution has been validated in an experiment involving 19 subjects, offering an average accuracy and F-measures close to 0.99 in an individual model and an accuracy and F-measure close to 0.85 in a global 2-level classifier model. Stress can be a worrying problem in different scenarios, such as in educational settings. Thus, the last part of the paper describes the proposal of a set of stress related indicators aimed to support the management of stress over time in such settings.
机译:本文讨论了使用市场上流行的可穿戴设备检测个人压力的可能性。综述了文献中发现的用于测量压力相关特征的不同工具,以区分主观测试和由来自临床设备的生理信号分析所支持的机制。以它们为参考,描述了一种基于商用手腕可穿戴设备和机器学习技术的压力估算解决方案。开发了一个移动应用程序,以统一且系统的方式诱发压力。该应用程序实现了众所周知的压力诱发因素,例如,起搏听觉序列附加测验,Stroop颜色词干扰测验和过度换气活动。可穿戴设备用于收集用于训练分类器的生理数据,这些分类器可提供有关个人压力水平的估计。该解决方案已在涉及19个受试者的实验中得到验证,在单个模型中提供的平均准确度和F-measures接近0.99,而在全局2级分类器模型中的准确度和F-measures接近0.85。在不同的情况下,例如在教育环境中,压力可能是一个令人担忧的问题。因此,本文的最后一部分描述了一组与压力相关的指标的建议,旨在支持在这种情况下随着时间的推移进行压力管理。

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