UC3M4Safety Team, Universidad Carlos III de Madrid, c/Butarque, 15, 28911 Madrid, Spain.
Departamento de Tecnología Electrónica, c/Butarque, 15, 28911 Madrid, Spain.
Sensors (Basel). 2022 May 26;22(11):4023. doi: 10.3390/s22114023.
Affective computing through physiological signals monitoring is currently a hot topic in the scientific literature, but also in the industry. Many wearable devices are being developed for health or wellness tracking during daily life or sports activity. Likewise, other applications are being proposed for the early detection of risk situations involving sexual or violent aggressions, with the identification of panic or fear emotions. The use of other sources of information, such as video or audio signals will make multimodal affective computing a more powerful tool for emotion classification, improving the detection capability. There are other biological elements that have not been explored yet and that could provide additional information to better disentangle negative emotions, such as fear or panic. Catecholamines are hormones produced by the adrenal glands, two small glands located above the kidneys. These hormones are released in the body in response to physical or emotional stress. The main catecholamines, namely adrenaline, noradrenaline and dopamine have been analysed, as well as four physiological variables: skin temperature, electrodermal activity, blood volume pulse (to calculate heart rate activity. i.e., beats per minute) and respiration rate. This work presents a comparison of the results provided by the analysis of physiological signals in reference to catecholamine, from an experimental task with 21 female volunteers receiving audiovisual stimuli through an immersive environment in virtual reality. Artificial intelligence algorithms for fear classification with physiological variables and plasma catecholamine concentration levels have been proposed and tested. The best results have been obtained with the features extracted from the physiological variables. Adding catecholamine's maximum variation during the five minutes after the video clip visualization, as well as adding the five measurements (1-min interval) of these levels, are not providing better performance in the classifiers.
通过生理信号监测进行情感计算目前是科学文献中的一个热门话题,也是工业界的热门话题。许多可穿戴设备正在被开发出来,用于日常生活或运动活动中的健康或健康跟踪。同样,其他应用程序也被提出用于早期检测涉及性或暴力侵犯的风险情况,识别恐慌或恐惧情绪。使用其他信息源,如视频或音频信号,将使多模态情感计算成为一种更强大的情感分类工具,提高检测能力。还有其他尚未探索的生物因素,它们可以提供额外的信息,以更好地区分负面情绪,如恐惧或恐慌。儿茶酚胺是由肾上腺产生的激素,肾上腺是位于肾脏上方的两个小腺体。这些激素在身体受到身体或情绪压力时释放出来。主要的儿茶酚胺,即肾上腺素、去甲肾上腺素和多巴胺,以及四个生理变量:皮肤温度、皮肤电活动、血管容积脉搏(计算心率活动,即每分钟跳动次数)和呼吸频率,都进行了分析。这项工作比较了通过对 21 名女性志愿者在虚拟现实中的沉浸式环境中接受视听刺激的实验任务中,对生理信号和血浆儿茶酚胺浓度水平进行分析得到的结果。提出并测试了使用生理变量和血浆儿茶酚胺浓度水平进行恐惧分类的人工智能算法。从生理变量中提取特征可以获得最佳结果。在视频剪辑可视化后五分钟内添加儿茶酚胺的最大变化,以及添加这些水平的五次测量(1 分钟间隔),并不会在分类器中提供更好的性能。