Abstract

Researchers strive hard to develop effective ways to detect and cope with enduring high-level daily stress as early as possible to prevent serious health consequences. Although research has traditionally been conducted in laboratory settings, a set of new studies have recently begun to be conducted in ecological environments with unobtrusive wearable devices. Since patterns of stress are ideographic, person-independent models have generally lower accuracies. On the contrary, person-specific models have higher accuracies but they require a long-term data collection period. In this study, we developed a hybrid approach of personal level stress clustering by using baseline stress self-reports to increase the success of person-independent models without requiring a substantial amount of personal data. We further added decision level smoothing to our unobtrusive smartwatch based stress level differentiation system to increase the performance by correcting false labels assigned by the machine learning algorithm. In order to test and evaluate our system, we collected physiological data from 32 participants of a summer school with wrist-worn unobtrusive wearable devices. This event is comprised of baseline, lecture, exam and recovery sessions. In the recovery session, a stress management method was applied to alleviate the stress of the participants. The perceived stress in the form of NASA-TLX questionnaires collected from the users as self-reports and physiological stress levels extracted using wearable sensors are examined separately. By using our system, we were able to differentiate the 3-levels of stress successfully. We further substantially increase our performance by personal stress level clustering and by applying high-level accuracy calculation and decision level smoothing methods. We also demonstrated the success of the stress reduction methods by analyzing physiological signals and self-reports.

Highlights

  • Smart-sensing, pervasive and ubiquitous technologies have become more accessible during the last decade

  • We showed that our experiment creates three different psychological states and raw NASA-TLX and modified version can show the difference between these states

  • We tested our algorithms in real-life settings which include baseline, cognitive load, stress and recovery sessions of 32 participants in a summer school

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Summary

Introduction

Smart-sensing, pervasive and ubiquitous technologies have become more accessible during the last decade. A variety of smart sensing devices are emerging in the market, The associate editor coordinating the review of this manuscript and approving it for publication was Yue Zhang. With new sensing technologies offering more personal health monitoring options. Sophisticated sensor systems can be found in most modern smartphones and smartwatches. An individual’s daily routines, fitness and physical activities can be deduced using the data coming from these sensing units. This information may help individuals to better understand and adapt their behaviors to their benefit.

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