Data Collection and Labeling of Real-Time IoT-Enabled Bio-Signals in
Everyday Settings for Mental Health Improvement
- URL: http://arxiv.org/abs/2108.01169v1
- Date: Mon, 2 Aug 2021 20:56:48 GMT
- Title: Data Collection and Labeling of Real-Time IoT-Enabled Bio-Signals in
Everyday Settings for Mental Health Improvement
- Authors: Ali Tazarv, Sina Labbaf, Amir M. Rahmani, Nikil Dutt, Marco Levorato
- Abstract summary: Real-time physiological data collection and analysis play a central role in modern well-being applications.
This paper builds a system for the real-time collection and analysis of photoplethysmogram, acceleration, gyroscope, and gravity data from a wearable sensor.
- Score: 6.7377504888630675
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Real-time physiological data collection and analysis play a central role in
modern well-being applications. Personalized classifiers and detectors have
been shown to outperform general classifiers in many contexts. However,
building effective personalized classifiers in everyday settings - as opposed
to controlled settings - necessitates the online collection of a labeled
dataset by interacting with the user. This need leads to several challenges,
ranging from building an effective system for the collection of the signals and
labels, to developing strategies to interact with the user and building a
dataset that represents the many user contexts that occur in daily life. Based
on a stress detection use case, this paper (1) builds a system for the
real-time collection and analysis of photoplethysmogram, acceleration,
gyroscope, and gravity data from a wearable sensor, as well as self-reported
stress labels based on Ecological Momentary Assessment (EMA), and (2) collects
and analyzes a dataset to extract statistics of users' response to queries and
the quality of the collected signals as a function of the context, here defined
as the user's activity and the time of the day.
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