Abstract

In this study, we performed skeleton-based body mass index (BMI) classification by developing a unique ensemble learning method for human healthcare. Traditionally, anthropometric features, including the average length of each body part and average height, have been utilized for this kind of classification. Average values are generally calculated for all frames because the length of body parts and the subject height vary over time, as a result of the inaccuracy in pose estimation. Thus, traditionally, anthropometric features are measured over a long period. In contrast, we controlled the window used to measure anthropometric features over short/mid/long-term periods. This approach enables our proposed ensemble model to obtain robust and accurate BMI classification results. To produce final results, the proposed ensemble model utilizes multiple k-nearest neighbor classifiers trained using anthropometric features measured over several different time periods. To verify the effectiveness of the proposed model, we evaluated it using a public dataset. The simulation results demonstrate that the proposed model achieves state-of-the-art performance when compared with benchmark methods.

Highlights

  • Over the past several decades, the percentage of the population that is obese has steadily increased

  • According to the results presented in the literature, obesity is related to several diseases such as diabetes [1], high blood pressure [2], hyperlipidemia [3], cholelithiasis [4], hypopnea [5], arthritis [6] and mental disorders [7], meaning that the death rate for the obese is relatively high

  • According to the recommendations in [52], the radial basis function (RBF) kernel was used for the C-support vector machine (SVM) and nu-SVM models

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Summary

Introduction

Over the past several decades, the percentage of the population that is obese has steadily increased. Since obesity can cause various diseases, its prevalence among people has become a major social issue. To identify its adverse effects, many studies have investigated the relationship between obesity and various diseases. According to the results presented in the literature, obesity is related to several diseases such as diabetes [1], high blood pressure [2], hyperlipidemia [3], cholelithiasis [4], hypopnea [5], arthritis [6] and mental disorders [7], meaning that the death rate for the obese is relatively high. The World Health Organization (WHO) defines obesity as excessive fat accumulation that may threaten life. The WHO uses the body mass index (BMI) to identify obesity in people

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