从模拟单相机图像中估计人体体积的三维重建的修改和改进。

IF 1.9 Q3 ENDOCRINOLOGY & METABOLISM
Chuang-Yuan Chiu, Marcus Dunn, Ben Heller, Sarah M Churchill, Tom Maden-Wilkinson
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引用次数: 0

摘要

目的:利用体体积(Body volume, BV)计算体成分,进行肥胖评估。传统的BV估计技术,如水下称重,可能难以应用。先进的机器学习技术可以使用单个相机图像获得多个与肥胖相关的身体测量;然而,使用这些技术计算的BV的准确性是未知的。本研究旨在适应和评估一种机器学习技术,对真实准确的姿势和形状(绑带)进行综合训练,以估计BV。方法:应用机器学习技术(bands)从模拟二维(2D)图像生成三维(3D)模型;然后将这些3D模型按身高进行缩放,并使用经体重校正的回归模型估计BV。使用具有广泛参与者(n = 4318)的商业3D扫描数据集来比较参考和估计的BV数据。结果:所建立的方法估计体重的相对标准误差较小(2,男性为1.9%,女性为1.8%),比BMI≥30 kg/m2人群(男性为6.9%,女性为2.4%)更准确。结论:该方法可用于BMI为2的女性和男性的BV估算,可用于家庭或诊所的肥胖评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Modification and refinement of three-dimensional reconstruction to estimate body volume from a simulated single-camera image.

Modification and refinement of three-dimensional reconstruction to estimate body volume from a simulated single-camera image.

Modification and refinement of three-dimensional reconstruction to estimate body volume from a simulated single-camera image.

Objective: Body volumes (BV) are used for calculating body composition to perform obesity assessments. Conventional BV estimation techniques, such as underwater weighing, can be difficult to apply. Advanced machine learning techniques enable multiple obesity-related body measurements to be obtained using a single-camera image; however, the accuracy of BV calculated using these techniques is unknown. This study aims to adapt and evaluate a machine learning technique, synthetic training for real accurate pose and shape (STRAPS), to estimate BV.

Methods: The machine learning technique, STRAPS, was applied to generate three-dimensional (3D) models from simulated two-dimensional (2D) images; these 3D models were then scaled with body stature and BV were estimated using regression models corrected for body mass. A commercial 3D scan dataset with a wide range of participants (n = 4318) was used to compare reference and estimated BV data.

Results: The developed methods estimated BV with small relative standard errors of estimation (<7%) although performance varied when applied to different groups. The BV estimated for people with body mass index (BMI) < 30 kg/m2 (1.9% for males and 1.8% for females) were more accurate than for people with BMI ≥ 30 kg/m2 (6.9% for males and 2.4% for females).

Conclusions: The developed method can be used for females and males with BMI < 30 kg/m2 in BV estimation and could be used for obesity assessments at home or clinic settings.

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来源期刊
Obesity Science & Practice
Obesity Science & Practice ENDOCRINOLOGY & METABOLISM-
CiteScore
4.20
自引率
4.50%
发文量
73
审稿时长
29 weeks
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