Sports Engineering Research Group, Sheffield Hallam University, Sheffield, UK.
Hawk-eye Innovations Ltd., Basingstoke, UK.
Eur J Sport Sci. 2022 Aug;22(8):1204-1210. doi: 10.1080/17461391.2021.1921041. Epub 2021 May 16.
Somatotype is an approach to quantify body physique (shape and body composition). Somatotyping by manual measurement (the anthropometric method) or visual rating (the photoscopic method) needs technical expertize to minimize intra- and inter-observer errors. This study aims to develop machine learning models which enable automatic estimation of Heath-Carter somatotypes using a single-camera 3D scanning system. Single-camera 3D scanning was used to obtain 3D imaging data and computer vision techniques to extract features of body shape. Machine learning models were developed to predict participants' somatotypes from the extracted shape features. These predicted somatotypes were compared against manual measurement procedures. Data were collected from 46 participants and used as the training/validation set for model developing, whilst data collected from 17 participants were used as the test set for model evaluation. Evaluation tests showed that the 3D scanning methods enable accurate (mean error < 0.5; intraclass correlation coefficients >0.8) and precise (test-retest root mean square error < 0.5; intraclass correlation coefficients >0.8) somatotype predictions. This study shows that the 3D scanning methods could be used as an alternative to traditional somatotyping approaches after the current models improve with the large datasets.
体型是一种量化身体形态(形状和身体成分)的方法。通过手动测量(人体测量法)或视觉评分(照片法)进行体型分类需要技术专长,以最大程度地减少观察者内和观察者间的误差。本研究旨在开发机器学习模型,这些模型可使用单摄像头 3D 扫描系统自动估计 Heath-Carter 体型。单摄像头 3D 扫描用于获取 3D 成像数据,计算机视觉技术用于提取身体形状特征。开发了机器学习模型,以便从提取的形状特征预测参与者的体型。将这些预测的体型与手动测量程序进行了比较。从 46 名参与者那里收集的数据被用作模型开发的训练/验证集,而从 17 名参与者那里收集的数据被用作模型评估的测试集。评估测试表明,3D 扫描方法能够进行准确(平均误差<0.5;组内相关系数>0.8)和精确(测试-再测试均方根误差<0.5;组内相关系数>0.8)的体型预测。本研究表明,在当前模型使用大型数据集进行改进后,3D 扫描方法可以替代传统的体型分类方法。