Physical Activity Recognition using Wearable Accelerometers in Controlled and Free-Living Environments

Master Thesis (2018)
Author(s)

K. Konsolakis (TU Delft - Mechanical Engineering)

Contributor(s)

R. Heusdens – Mentor

WA Serdijn – Graduation committee member

David M. J. Tax – Graduation committee member

Faculty
Mechanical Engineering
Copyright
© 2018 Kostas Konsolakis
More Info
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Publication Year
2018
Language
English
Copyright
© 2018 Kostas Konsolakis
Graduation Date
16-07-2018
Awarding Institution
Delft University of Technology
Faculty
Mechanical Engineering
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Abstract

Physical activity recognition through wearables has enabled the development of novel applications in healthcare. Most of the existing studies focus on predicting activities using wearable sensors, either in a controlled or uncontrolled environment. However, there is not a clear distinction between these two environments. Hence, this thesis aimed to answer the research question “How accurately can we classify physical activity based on wearable accelerometers placed on the wrist and chest in a controlled and in a free-living environment?".

For the data collection phase, two experiments were conducted in the working environment of imec. 40 participants were recruited and were asked to participate in the Controlled and Free-Living Study. The subjects wore two imec wearables, a wrist-worn and chest-worn accelerometer sensor and performed everyday activities. These activities include sitting, dynamic sitting, lying with face up and face down, lying to the left and right, standing, dynamic standing, walking upstairs, walking downstairs, walking, running, and cycling. The Controlled Study showed that most of these activities could be detected accurately using accelerometer data from both sensors with 91.83% F1-score. Similarly, the combination of these two sensors achieved the best performance for the Free-Living Study with 86.98% F1-score. Finally, this work proved that between the two environments a correlation could be possible only for the activity cycling. Consequently, this research concludes that the activity recognition should be explicitly investigated in free-living environments, focusing on real-time activity detection.

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