Precise measurement of physiological signals is critical for the effective monitoring of human vital signs. Recent developments in computer vision have demonstrated that signals such as pulse rate and respiration rate can be extracted from digital video of humans, increasing the possibility of contact-less monitoring. This paper presents a novel approach to obtaining physiological signals and classifying stress states from thermal video. The proposed network--"StressNet"--features a hybrid emission representation model that models the direct emission and absorption of heat by the skin and underlying blood vessels. This results in an information-rich feature representation of the face, which is used by spatio-temporal network for reconstructing the ISTI ( Initial Systolic Time Interval: a measure of change in cardiac sympathetic activity that is considered to be a quantitative index of stress in humans ). The reconstructed ISTI signal is fed into a stress-detection model to detect and classify the individual's stress state ( i.e. stress or no stress ). A detailed evaluation demonstrates that StressNet achieves estimated the ISTI signal with 95% accuracy and detect stress with average precision of 0.842. The source code is available on Github.
翻译:精确测量生理信号对于有效监测人类生命迹象至关重要。计算机视觉的近期发展表明,脉搏率和呼吸率等信号可以从人类数字视频中提取,从而增加无接触监测的可能性。本文件介绍了一种新颖的方法,以获取生理信号和从热视频中将压力状态分类。拟议的网络-“StressNet”-特征是一种混合排放代表模型,用以模拟皮肤和底部血管直接排放和吸收热量。这导致一个信息丰富的面部特征描述,用于重建 ISTI (最初的Systolic时间间隔:心脏同情性活动的变化量,被认为是人类压力的定量指数) 重建后的 ISTI 信号被注入一种压力检测模型,用以检测和分类个人压力状态(即压力或无压力)。详细评估表明,EstistriNet以95%的准确度和平均精确度为0.842的检测压力对面部进行了估算。源代码可在Githhub上查到。