A Multimodal Approach To Improve The Robustness Of Physiological Stress Prediction During Physical Activity

2019 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN AND CYBERNETICS (SMC)(2019)

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摘要
Stress is well known to have negative effects on health and workplace performance. Physiological sensing using wearables shows in turn great potential for real-time stress monitoring. While some off-the-shelf consumer products (e.g. smartwatches) already feature stress detection, there is still a pressing need to improve the robustness of these models in ecological settings where physical activity can hamper detection accuracy. In this paper, we show that using a multimodal physiological stress model can not only improve model accuracy, but can increase robustness to physical activity inference. To do so, we propose a video game based method to elicit emotional responses. More specifically, 48 participants played video games in which psychological stress and physical activity were jointly modulated. Physiological features showing robustness to stress are analyzed in order to guide further research.
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关键词
physiological stress prediction,physiological sensing,turn great potential,realtime stress monitoring,stress detection,multimodal physiological stress model,physical activity inference,video game,psychological stress,physiological signals,emotional responses,wearable devices
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