Abstract

Performing regular physical activity positively affects individuals’ quality of life in both the short- and long-term and also contributes to the prevention of chronic diseases. However, exerted effort is subjectively perceived from different individuals. Therefore, this work explores an out-of-laboratory approach using a wrist-worn device to classify the perceived intensity of physical effort based on quantitative measured data. First, the exerted intensity is classified by two machine learning algorithms, namely the Support Vector Machine and the Bagged Tree, fed with features computed on heart-related parameters, skin temperature, and wrist acceleration. Then, the outcomes of the classification are exploited to validate the use of the Electrodermal Activity signal alone to rate the perceived effort. The results show that the Support Vector Machine algorithm applied on physiological and acceleration data effectively predicted the relative physical activity intensities, while the Bagged Tree performed best when the Electrodermal Activity data were the only data used.

Highlights

  • Performing regular Physical Activity (PA) positively affects individuals’ quality of life, both in the short- and long-term, and contributes to preventing chronic diseases

  • The exerted intensity is classified by two machine learning algorithms, namely the Support Vector Machine and the Bagged Tree, fed with features computed on heart-related parameters, skin temperature, and wrist acceleration

  • For the aim of the current study, based on signals collected from a wearable device and on the use of Machine Learning (ML) classifiers, a general-purpose framework typically adopted for Human Activity Recognition (HAR) systems [31] can be applied, which segregates the procedure in several modules, namely the raw data acquisition, data processing, data segmentation, feature extraction and classification

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Summary

Introduction

Performing regular Physical Activity (PA) positively affects individuals’ quality of life, both in the short- and long-term, and contributes to preventing chronic diseases. The regularity and intensity of performed PA has become an essential criterion for holistically evaluating the health status of a person [1]. A minimum weekly amount of 150 min of moderate intensity PA and 75 min of vigorous intensity PA, performed in at least 10 min-long sessions, is recommended by the World Health Organization (WHO) to prevent chronic diseases, such as breast and colon cancer, type-2 diabetes, depression, and cardiovascular issues [2,3]. According to the World Heart Federation (WHF), physical inactivity increases the risk of hypertension by 30 percent, and of coronary heart disease by 22 percent [4]. Among the several applications in which the assessment of the PA can be crucial, the remote human health monitoring has a pivotal role

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