Extending Stress Detection Reproducibility to Consumer Wearable Sensors
Ohida Binte Amin, Varun Mishra, Tinashe M. Tapera, Robert Volpe, Aarti Sathyanarayana

TL;DR
This study evaluates the reproducibility of stress detection models across consumer wearable sensors and research-grade devices, highlighting device-specific performance variations and the potential of consumer wearables for real-world stress monitoring.
Contribution
It extends stress detection reproducibility analysis to consumer wearables, comparing their performance with research-grade devices in controlled stress studies.
Findings
Biopac MP160 showed the best performance as a gold standard.
Combining HRV and EDA improved stress prediction.
Garmin Forerunner 55s demonstrated strong real-world potential.
Abstract
Wearable sensors are widely used to collect physiological data and develop stress detection models. However, most studies focus on a single dataset, rarely evaluating model reproducibility across devices, populations, or study conditions. We previously assessed the reproducibility of stress detection models across multiple studies, testing models trained on one dataset against others using heart rate (with R-R interval) and electrodermal activity (EDA). In this study, we extended our stress detection reproducibility to consumer wearable sensors. We compared validated research-grade devices, to consumer wearables - Biopac MP160, Polar H10, Empatica E4, to the Garmin Forerunner 55s, assessing device-specific stress detection performance by conducting a new stress study on undergraduate students. Thirty-five students completed three standardized stress-induction tasks in a lab setting.…
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Taxonomy
TopicsEmotion and Mood Recognition · Advanced Sensor and Energy Harvesting Materials · Digital Mental Health Interventions
MethodsFocus
