Scalable multi-class sampling via filtered sliced optimal transport
Graphics
2022-11-09 v1
Abstract
We propose a multi-class point optimization formulation based on continuous Wasserstein barycenters. Our formulation is designed to handle hundreds to thousands of optimization objectives and comes with a practical optimization scheme. We demonstrate the effectiveness of our framework on various sampling applications like stippling, object placement, and Monte-Carlo integration. We a derive multi-class error bound for perceptual rendering error which can be minimized using our optimization. We provide source code at https://github.com/iribis/filtered-sliced-optimal-transport.
Keywords
Cite
@article{arxiv.2211.04314,
title = {Scalable multi-class sampling via filtered sliced optimal transport},
author = {Corentin Salaün and Iliyan Georgiev and Hans-Peter Seidel and Gurprit Singh},
journal= {arXiv preprint arXiv:2211.04314},
year = {2022}
}
Comments
15 pages, 17 figures, ACM Trans. Graph., Vol. 41, No. 6, Article 261. Publication date: December 2022