Model-based anthropometry: Predicting measurements from 3D human scans in multiple poses

Aggeliki Tsoli, M. Loper, Michael J. Black
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引用次数: 44

Abstract

Extracting anthropometric or tailoring measurements from 3D human body scans is important for applications such as virtual try-on, custom clothing, and online sizing. Existing commercial solutions identify anatomical landmarks on high-resolution 3D scans and then compute distances or circumferences on the scan. Landmark detection is sensitive to acquisition noise (e.g. holes) and these methods require subjects to adopt a specific pose. In contrast, we propose a solution we call model-based anthropometry. We fit a deformable 3D body model to scan data in one or more poses; this model-based fitting is robust to scan noise. This brings the scan into registration with a database of registered body scans. Then, we extract features from the registered model (rather than from the scan); these include, limb lengths, circumferences, and statistical features of global shape. Finally, we learn a mapping from these features to measurements using regularized linear regression. We perform an extensive evaluation using the CAESAR dataset and demonstrate that the accuracy of our method outperforms state-of-the-art methods.
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基于模型的人体测量学:从多种姿势的3D人体扫描预测测量
从3D人体扫描中提取人体测量或剪裁测量对于虚拟试穿,定制服装和在线尺寸等应用非常重要。现有的商业解决方案在高分辨率3D扫描中识别解剖地标,然后计算扫描的距离或周长。地标检测对采集噪声(如孔洞)很敏感,这些方法需要受试者采取特定的姿势。相反,我们提出了一种解决方案,我们称之为基于模型的人体测量学。我们拟合一个可变形的3D身体模型来扫描一个或多个姿势的数据;这种基于模型的拟合对扫描噪声具有较强的鲁棒性。这将扫描与已注册的身体扫描数据库进行注册。然后,我们从注册模型中提取特征(而不是从扫描中);这些包括肢体长度、周长和全局形状的统计特征。最后,我们使用正则化线性回归学习从这些特征到测量的映射。我们使用CAESAR数据集进行了广泛的评估,并证明我们的方法的准确性优于最先进的方法。
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