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利用图像处理技术检测肥胖监测中的体型变化。

Detection of body shape changes in obesity monitoring using image processing techniques.

机构信息

Engineering Faculty, Biomedical Engineering Department , Afyon Kocatepe University, 03200, Afyonkarahisar, Turkey.

Afyon Vocational School, Electronics and Automation Department , Afyon Kocatepe University, 03200, Afyonkarahisar, Turkey.

出版信息

Sci Rep. 2024 Oct 15;14(1):24178. doi: 10.1038/s41598-024-73270-6.

Abstract

Body measurements are primarily made with a tape measure. In measurements taken with a tape measure, the inability to take measurements from the same part of the body each time, incorrect positioning of the tape measure, the occurrence of incorrect measurements, and the need for a person to take the measurements are significant problems in the traditional measurement method. Due to the social distancing rule that must be followed during the Covid-19 pandemic, the close contact between the person to be measured and the person taking the measurement became the starting point of this study. This study focuses on the detecting body shape changes using image processing techniques with 2D imaging. The novelty of the work is that non-contact body measurements are taken more accurately and reliably using the cosine theorem. Regular monitoring of obese patients is important in combating obesity, which is also the source of many health problems. In the monitoring of obese patients, it is necessary to determine the rate of slimming in areas where fat accumulation is intense. The error margin between the real measurements of human models and the calculated measurements was calculated as an average of ± 5.16% for waistline and an average of ± 4.58% for hip size. The cosine theorem was used instead of the ellipse formula used in the literature, and it was observed that the cosine theorem obtained results closer to reality. It is also thought that the developed system will be beneficial not only for extracting body measurements but also for extracting body measurements contactless in the textile sector. The study demonstrates the feasibility of image processing for non-contact body anthropometry and shape tracking.

摘要

人体测量主要使用卷尺进行。在使用卷尺进行的测量中,每次无法从身体的同一部位进行测量、卷尺定位不正确、测量出现错误以及需要有人进行测量,这些都是传统测量方法中的重大问题。由于在新冠疫情期间必须遵守社交距离规定,因此被测量者和测量者之间的密切接触成为了这项研究的起点。本研究专注于使用二维成像的图像处理技术检测体型变化。这项工作的新颖之处在于,通过余弦定理,可以更准确、可靠地进行非接触式人体测量。定期监测肥胖患者对于对抗肥胖症非常重要,肥胖症也是许多健康问题的根源。在监测肥胖患者时,需要确定脂肪堆积严重的区域的减肥速度。人体模型的实际测量值与计算值之间的误差范围为腰围的平均±5.16%,臀围的平均±4.58%。本研究使用了余弦定理代替文献中使用的椭圆公式,结果表明余弦定理更接近实际情况。此外,还认为开发的系统不仅有助于提取人体测量值,而且有助于在纺织领域提取非接触式人体测量值。该研究证明了图像处理在非接触式人体人体测量和形状跟踪方面的可行性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0844/11480043/a0005d8384c2/41598_2024_73270_Fig1_HTML.jpg

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