Authors
Shara SA Alves, Elene F Ohata, Pedro C Sousa Junior, Calleo B Barroso, Navar MM Nascimento, Luiz Lannes Loureiro, Victor Zaban Bittencourt, Valden Luis Matos Capistrano Junior, Atslands R da Rocha, Pedro P Rebouças Filho
Publication date
2023/9/30
Journal
Measurement
Volume
219
Pages
113213
Publisher
Elsevier
Description
Obesity is one of the most concerning nutritional issues since it is a significant risk factor for chronic diseases, including cardiovascular disease and diabetes. Many dietary disorders require an anthropometry assessment and body fat percentage (BFP) information. Dual-energy X-ray absorptiometry (DXA) is the most precise and automated method for determining BFP; nevertheless, it is costly and difficult to locate in clinics. This paper proposes the utilization of digital image processing and machine learning techniques to estimate BFP, considering four 2D camera images and additional factors such as age, weight, height, and sex. Our proposal specifically adopts a sex-specific approach. Our experiments included pre-processing steps and several regressors. Moreover, we built a dataset composed of 912 samples, including male and female individuals. The sex-based approach to estimating the BFP achieved …
Total citations
2023202413