2022
DOI: 10.48550/arxiv.2205.09111
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BodyMap: Learning Full-Body Dense Correspondence Map

Abstract: Dense correspondence between humans carries powerful semantic information that can be utilized to solve fundamental problems for full-body understanding such as in-thewild surface matching, tracking and reconstruction. In this paper we present BodyMap, a new framework for obtaining high-definition full-body and continuous dense correspondence between in-the-wild images of clothed humans and the surface of a 3D template model. The correspondences cover fine details such as hands and hair, while capturing region… Show more

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