论文标题

动态脚形态通过4D扫描和形状建模解释

Dynamic foot morphology explained through 4D scanning and shape modeling

论文作者

Boppana, Abhishektha, Anderson, Allison P.

论文摘要

对脚形态的详细理解可以使设计更舒适,更合身的鞋类。但是,脚形态在人群中差异很大,并且在姿势阶段的加载过程中动态变化。这项研究提出了一个参数统计形状的模型,从4D脚扫描中捕获了脚形态的个体间和个体内变异性。在立场阶段,以90帧的速度进行了30名受试者,在跑步机上行走,而4D右脚的右脚扫描则是在90帧中进行的。还记录了每个受试者的身高,体重,脚长,脚宽,拱形长度和性别。 4D扫描均已注册为常见的高质量脚扫描,并对所有处理过的4D扫描进行了主成分分析。构建了弹性网络线性回归模型,以预测主成分分数,然后将其反向转换为4D扫描。最佳性能模型是通过剩余的交叉验证选择的。所选模型是跨立场阶段的脚形态,其根平方误差为5.2 +/- 2.0 mm。这项研究表明,统计形状建模可用于预测整个人群中脚形态的动态变化。该型号可用于调查和改善脚踏板的相互作用,从而可以更好地合身和更舒适的鞋类。

A detailed understanding of foot morphology can enable the design of more comfortable and better fitting footwear. However, foot morphology varies widely within the population, and changes dynamically during the loading of stance phase. This study presents a parametric statistical shape model from 4D foot scans to capture both the inter- and intra-individual variability in foot morphology. Thirty subjects walked on a treadmill while 4D scans of their right foot were taken at 90 frames-per-second during stance phase. Each subject's height, weight, foot length, foot width, arch length, and sex were also recorded. The 4D scans were all registered to a common high-quality foot scan, and a principal component analysis was done on all processed 4D scans. Elastic-net linear regression models were built to predict the principal component scores, which were then inverse transformed into 4D scans. The best performing model was selected with leave-one-out cross-validation. The chosen model was predicts foot morphology across stance phase with a root-mean squared error of 5.2 +/- 2.0 mm. This study shows that statistical shape modeling can be used to predict dynamic changes in foot morphology across the population. The model can be used to investigate and improve foot-footwear interaction, allowing for better fitting and more comfortable footwear.

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