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Faculté des Sciences appliquées
Faculté des Sciences appliquées
MASTER THESIS

Master thesis : Prediction of the absolute and relative intensity of daily life activities

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Di Matteo, Alyssa ULiège
Promotor(s) : Schwartz, Cédric ULiège
Date of defense : 8-Sep-2025/9-Sep-2025 • Permalink : http://hdl.handle.net/2268.2/24791
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Title : Master thesis : Prediction of the absolute and relative intensity of daily life activities
Translated title : [fr] Prédiction de l'intensité absolue et relative des activités de la vie quotidienne
Author : Di Matteo, Alyssa ULiège
Date of defense  : 8-Sep-2025/9-Sep-2025
Advisor(s) : Schwartz, Cédric ULiège
Committee's member(s) : Bruls, Olivier ULiège
Maquet, Didier ULiège
Language : English
Number of pages : 70
Keywords : [en] physical activity
[en] relative intensity
[en] inertial measurement units
[en] machine learning
[en] classification
Discipline(s) : Engineering, computing & technology > Multidisciplinary, general & others
Institution(s) : Université de Liège, Liège, Belgique
Degree: Master en ingénieur civil biomédical, à finalité spécialisée
Faculty: Master thesis of the Faculté des Sciences appliquées

Abstract

[en] Physical activity plays a fundamental role in health, contributing to the prevention of chronic diseases and the promotion of overall well-being. Despite its benefits, a significant portion of the population remains inactive, highlighting the need for accurate and individualized methods to assess physical activity intensity. Intensity, which influences health outcomes, can be measured in absolute terms or in relative terms. While absolute intensity is independent of an individual’s fitness level, relative intensity offers a more individualized perspective, which is important for personalized assessment of physical activity.

This study explores the feasibility of classifying relative intensity using wearable inertial sensors combined with machine learning techniques, and compares its performance with absolute intensity classification. Data were collected from twenty participants performing seven daily activities, using inertial measurement units placed on the wrist and the foot to record movements. After data segmentation, feature extraction, and the construction of the final datasets, three supervised machine learning models including Random Forest, Support Vector Machine, and Multilayer Perceptron, were developed and evaluated. Both multiclass (sedentary, light, moderate and vigorous) and binary (sedentary-light vs. moderate-vigorous) classification were explored to assess model performance across different tasks and sensor placements. A feature importance analysis was also conducted to identify the most discriminative features in the classification of relative intensity using the wrist sensor.

The results indicated that classifying relative intensity from inertial sensor data remains challenging. Multiclass classification often resulted in confusion between intensity levels, whereas binary classification improved overall performance. Sensor placement affected model outcomes, with performance varying across algorithms and tasks. Absolute intensity classification achieved higher overall performance in both multiclass and binary tasks and for both sensor placements, although some confusion still occurred. These results show that absolute intensity is generally easier to classify than relative intensity, which reflects the additional complexity of personalizing intensity assessments. Among the tested models, Random Forest consistently achieved the highest performance across all tasks and sensor placements.

These findings provide insight into the challenges of using wearable sensors and machine learning to assess the relative intensity of physical activity.


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Author

  • Di Matteo, Alyssa ULiège Université de Liège > Master ing. civ. biom. fin. spéc.

Promotor(s)

Committee's member(s)

  • Bruls, Olivier ULiège Université de Liège - ULiège > Département d'aérospatiale et mécanique > Laboratoire des Systèmes Multicorps et Mécatroniques
    ORBi View his publications on ORBi
  • Maquet, Didier ULiège Université de Liège - ULiège > Dép. des Sciences de l'activité phys. et de la réadaptation > Dép. des Sciences de l'activité phys. et de la réadaptation
    ORBi View his publications on ORBi








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