Cho Dongrae, Ham Jinsil, Oh Jooyoung, Park Jeanho, Kim Sayup, Lee Nak-Kyu, Lee Boreom
Department of Biomedical Science and Engineering (BMSE), Institute of Integrated Technology (IIT), Gwangju Institute of Science and Technology, Gwangju 61005, Korea.
Research Institute of Industrial Technology Convergence, Korea Institute of Industrial Technology, Ansan 15588, Korea.
Sensors (Basel). 2017 Oct 24;17(10):2435. doi: 10.3390/s17102435.
Virtual reality (VR) is a computer technique that creates an artificial environment composed of realistic images, sounds, and other sensations. Many researchers have used VR devices to generate various stimuli, and have utilized them to perform experiments or to provide treatment. In this study, the participants performed mental tasks using a VR device while physiological signals were measured: a photoplethysmogram (PPG), electrodermal activity (EDA), and skin temperature (SKT). In general, stress is an important factor that can influence the autonomic nervous system (ANS). Heart-rate variability (HRV) is known to be related to ANS activity, so we used an HRV derived from the PPG peak interval. In addition, the peak characteristics of the skin conductance (SC) from EDA and SKT variation can also reflect ANS activity; we utilized them as well. Then, we applied a kernel-based extreme-learning machine (K-ELM) to correctly classify the stress levels induced by the VR task to reflect five different levels of stress situations: baseline, mild stress, moderate stress, severe stress, and recovery. Twelve healthy subjects voluntarily participated in the study. Three physiological signals were measured in stress environment generated by VR device. As a result, the average classification accuracy was over 95% using K-ELM and the integrated feature (IT = HRV + SC + SKT). In addition, the proposed algorithm can embed a microcontroller chip since K-ELM algorithm have very short computation time. Therefore, a compact wearable device classifying stress levels using physiological signals can be developed.
虚拟现实(VR)是一种计算机技术,可创建由逼真的图像、声音和其他感觉组成的人工环境。许多研究人员使用VR设备来生成各种刺激,并利用它们进行实验或提供治疗。在本研究中,参与者在测量生理信号(光电容积脉搏波图(PPG)、皮肤电活动(EDA)和皮肤温度(SKT))的同时,使用VR设备执行心理任务。一般来说,压力是影响自主神经系统(ANS)的一个重要因素。心率变异性(HRV)已知与ANS活动有关,因此我们使用了从PPG峰值间隔得出的HRV。此外,EDA的皮肤电导(SC)峰值特征和SKT变化也可以反映ANS活动;我们也利用了这些。然后,我们应用基于核的极限学习机(K-ELM)对VR任务诱发的压力水平进行正确分类,以反映五种不同程度的压力情况:基线、轻度压力、中度压力、重度压力和恢复。12名健康受试者自愿参与了该研究。在VR设备产生的压力环境中测量了三种生理信号。结果,使用K-ELM和综合特征(IT = HRV + SC + SKT)时,平均分类准确率超过95%。此外,由于K-ELM算法的计算时间非常短,所提出的算法可以嵌入微控制器芯片。因此,可以开发一种使用生理信号对压力水平进行分类的紧凑型可穿戴设备。