虚拟现实中人体生理参数的自动监测

S. V. Mazur, A. I. Golovaty
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引用次数: 0

摘要

一项研究是在正常状态和虚拟现实中控制一个人的脉搏。已经确定,当一个人处于虚拟现实中时,他的脉搏会明显加快。在这种情况下,可能会有各种各样的压力情况,在此期间脉搏急剧加快几次。在研究过程中,基于几个机器学习模型来预测一个人的脉搏,这使得预测一个人在不久的将来的状况,并协调一系列的行动来预防风险成为可能。最适合的模型是线性回归模型和SSA模型,其结果最准确、最可信。通过在虚拟现实中监测人的心率,可以根据虚拟现实场景对人体的影响程度进行分类。这样可以考虑到患有各种慢性疾病的人,并限制他们进入对他们来说是禁忌的场景。这项研究的结果是一个软件包,它允许在虚拟现实中从低功耗蓝牙设备连续收集心率数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Monitoring of Human Physiological Parameters While Being in Virtual Reality
A study was conducted on the control of a person’s pulse in the normal state and while in virtual reality. It has been established that a person’s pulse can increase significantly when he is in virtual reality. In this case, there may be various stressful situations, during which the pulse sharply quickens several times. In the process of research, a person’s pulse was predicted based on several machine learning models, which made it possible to predict a person’s condition in the near future and coordinate a series of actions to prevent risks. The most suitable models were linear regression and SSA, which showed the most accurate and plausible results. By monitoring the human heart rate in virtual reality, virtual reality scenes can be classified according to the degree of their effect on the human body. This allows to take into account people with various chronic diseases and to limit their access to scenes that are contraindicated for them. The result of the research was a software package that allows to continuously collectheart beat rate data while in virtual reality from a Bluetooth Low Energy device.
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