Autors: Vladimirov, I. H., Nenova, M. V., Nikolova, D. V.
Title: Overview Paper: Datasets of 3D Deformable Digital Models of Clothes and Garments Usable in the Metaverse
Keywords: 3D Reconstruction, Deformable Models of Digital Clothes, Sca

Abstract: The reconstruction of 3D models of people and dressing them in digital clothes, also known as avatars in recent years, has seen a kind of evolution caused by the growing needs of our society in the online environment. The processes of digitalization and virtualization in every aspect of our lives will give rise to phenomena leading to changes in social relations and the construction of a new reality. In this scientific paper, an overview of all available datasets of 3D deformable digital models of clothes and garments is done. The intent of this survey is to review the state-of-the-art approaches in the area and analyse their strengths and weaknesses.

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Issue

ICEST Conference, issue 58, pp. 273-276, 2023, Serbia, IEEE, DOI 10.1109/ICEST58410.2023.10187260

Copyright IEEE

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Вид: постер/презентация в международен форум, публикация в реферирано издание, индексирана в Scopus