ULNeF: Untangled Layered Neural Fields for Mix-and-Match Virtual Try-on

Abstract

Recent advances in neural models have shown great results for virtual try-on (VTO) problems, where a 3D representation of a garment is deformed to fit a target body shape. However, current solutions are limited to a single garment layer, and cannot address the combinatorial complexity of mixing different garments. Motivated by this limitation, we investigate the use of neural fields for mix-and-match VTO, and identify and solve a fundamental challenge that existing neural-field methods cannot address: the interaction between layered neural fields. To this end, we propose a neural model that untangles layered neural fields to represent collision-free garment surfaces. The key ingredient is a neural untangling projection operator that works directly on the layered neural fields, not on explicit surface representations. Algorithms to resolve object-object interaction are inherently limited by the use of explicit geometric representations, and we show how methods that work directly on neural implicit representations could bring a change of paradigm and open the door to radically different approaches.

Cite

Text

Santesteban et al. "ULNeF: Untangled Layered Neural Fields for Mix-and-Match Virtual Try-on." Neural Information Processing Systems, 2022.

Markdown

[Santesteban et al. "ULNeF: Untangled Layered Neural Fields for Mix-and-Match Virtual Try-on." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/santesteban2022neurips-ulnef/)

BibTeX

@inproceedings{santesteban2022neurips-ulnef,
  title     = {{ULNeF: Untangled Layered Neural Fields for Mix-and-Match Virtual Try-on}},
  author    = {Santesteban, Igor and Otaduy, Miguel and Thuerey, Nils and Casas, Dan},
  booktitle = {Neural Information Processing Systems},
  year      = {2022},
  url       = {https://mlanthology.org/neurips/2022/santesteban2022neurips-ulnef/}
}