360-Degree Textures of People in Clothing from a Single Image
Verica Lazova, Eldar Insafutdinov, Gerard Pons-Moll

TL;DR
This paper presents a method to generate complete 3D avatars of people from a single image by predicting textures and geometries in UV-space, enabling pose and clothing modifications.
Contribution
It introduces a novel image-to-image translation approach that predicts full textures and geometries in UV-space from partial inputs, generalizing to new poses and clothing.
Findings
Successfully reconstructs plausible 3D avatars from single images.
Enables digital pose, shape, and clothing editing.
Demonstrates effectiveness on DeepFashion dataset.
Abstract
In this paper we predict a full 3D avatar of a person from a single image. We infer texture and geometry in the UV-space of the SMPL model using an image-to-image translation method. Given partial texture and segmentation layout maps derived from the input view, our model predicts the complete segmentation map, the complete texture map, and a displacement map. The predicted maps can be applied to the SMPL model in order to naturally generalize to novel poses, shapes, and even new clothing. In order to learn our model in a common UV-space, we non-rigidly register the SMPL model to thousands of 3D scans, effectively encoding textures and geometries as images in correspondence. This turns a difficult 3D inference task into a simpler image-to-image translation one. Results on rendered scans of people and images from the DeepFashion dataset demonstrate that our method can reconstruct…
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