Abstract

Insufficient physical activity is common in modern society. By estimating the energy expenditure (EE) of different physical activities, people can develop suitable exercise plans to improve their lifestyle quality. However, several limitations still exist in the related works. Therefore, the aim of this study is to propose an accurate EE estimation model based on depth camera data with physical activity classification to solve the limitations in the previous research. To decide the best location and amount of cameras of the EE estimation, three depth cameras were set at three locations, namely the side, rear side, and rear views, to obtain the kinematic data and EE estimation. Support vector machine was used for physical activity classification. Three EE estimation models, namely linear regression, multilayer perceptron (MLP), and convolutional neural network (CNN) models, were compared and determined the model with optimal performance in different experimental settings. The results have shown that if only one depth camera is available, optimal EE estimation can be obtained using the side view and MLP model. The mean absolute error (MAE), mean square error (MSE), and root MSE (RMSE) of the classification results under the aforementioned settings were 0.55, 0.66, and 0.81, respectively. If higher accuracy is required, two depth cameras can be set at the side and rear views, the CNN model can be used for light-to-moderate activities, and the MLP model can be used for vigorous activities. The RMSEs for estimating the EEs of standing, walking, and running were 0.19, 0.57, and 0.96, respectively. By applying the different models on different amounts of cameras, the optimal performance can be obtained, and this is also the first study to discuss the issue.

Highlights

  • Sedentary lifestyles are common in modern society

  • Mo the results along show that after applying physical for EEin estimation, the performance of estimating for light to moderate activity, such as standing and walking, the results show that after applying physical activity classification for EE estimat will be improved; the performance for vigorous activity will not be improved by performance of estimating EE for light to moderate activity, such as standing and w applying physical activity classification according to the results

  • This paper proposed an EE estimation system based on physical activity classification

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Summary

Introduction

Sedentary lifestyles are common in modern society. Insufficient physical activity increases the risk of noncommunicable diseases (NCDs) [1], such as cardiovascular diseases, respiratory diseases, cancers, stroke, and diabetes. Some elderly are unable to go outside to meet the basic daily requirements of physical activities because of certain healthy issues. For those elderly who can only stay at home, it is necessary to estimate their EE of indoor activities and ensure they meet the basic requirement of physical activity. People use the portable metabolic analyzer to measure EE during exercise. The portable metabolic analyzers provide the most direct and accurate method for measuring calorie consumption, users of the system find it inconvenient when performing physical activities because they must carry an instrument and wear an oxygen mask during exercise

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