Context-Aware Stress Monitoring using Wearable and Mobile Technologies in Everyday Settings (2401.05367v1)
Abstract: Daily monitoring of stress is a critical component of maintaining optimal physical and mental health. Physiological signals and contextual information have recently emerged as promising indicators for detecting instances of heightened stress. Nonetheless, developing a real-time monitoring system that utilizes both physiological and contextual data to anticipate stress levels in everyday settings while also gathering stress labels from participants represents a significant challenge. We present a monitoring system that objectively tracks daily stress levels by utilizing both physiological and contextual data in a daily-life environment. Additionally, we have integrated a smart labeling approach to optimize the ecological momentary assessment (EMA) collection, which is required for building machine learning models for stress detection. We propose a three-tier Internet-of-Things-based system architecture to address the challenges. We utilized a cross-validation technique to accurately estimate the performance of our stress models. We achieved the F1-score of 70\% with a Random Forest classifier using both PPG and contextual data, which is considered an acceptable score in models built for everyday settings. Whereas using PPG data alone, the highest F1-score achieved is approximately 56\%, emphasizing the significance of incorporating both PPG and contextual data in stress detection tasks.
- Seyed Amir Hossein Aqajari (9 papers)
- Sina Labbaf (10 papers)
- Phuc Hoang Tran (1 paper)
- Brenda Nguyen (3 papers)
- Milad Asgari Mehrabadi (6 papers)
- Marco Levorato (50 papers)
- Nikil Dutt (43 papers)
- Amir M. Rahmani (48 papers)