2024
DOI: 10.1111/cgf.15046
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TailorMe: Self‐Supervised Learning of an Anatomically Constrained Volumetric Human Shape Model

S. Wenninger,
F. Kemper,
U. Schwanecke
et al.

Abstract: Human shape spaces have been extensively studied, as they are a core element of human shape and pose inference tasks. Classic methods for creating a human shape model register a surface template mesh to a database of 3D scans and use dimensionality reduction techniques, such as Principal Component Analysis, to learn a compact representation. While these shape models enable global shape modifications by correlating anthropometric measurements with the learned subspace, they only provide limited localized shape … Show more

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