Affiliation:
1. State Key Lab of CAD&CG, Zhejiang University, Hangzhou, China
2. University of California, Irvine, CA, USA
Abstract
In this article, we introduce a compact representation for measured BRDFs by leveraging Neural Processes (NPs). Unlike prior methods that express those BRDFs as discrete high-dimensional matrices or tensors, our technique considers measured BRDFs as
continuous functions
and works in corresponding
function spaces
. Specifically, provided the evaluations of a set of BRDFs, such as ones in MERL and EPFL datasets, our method learns a low-dimensional latent space as well as a few neural networks to encode and decode these measured BRDFs or new BRDFs into and from this space in a non-linear fashion. Leveraging this latent space and the flexibility offered by the NPs formulation, our encoded BRDFs are highly compact and offer a level of accuracy better than prior methods. We demonstrate the practical usefulness of our approach via two important applications, BRDF compression and editing. Additionally, we design two alternative post-trained decoders to, respectively, achieve better compression ratio for individual BRDFs and enable importance sampling of BRDFs.
Funder
NSFC
Zhejiang Provincial NSFC
National Key R&D Program of China
Zhejiang University Education Foundation Global Partnership Fund
Adobe Research
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Graphics and Computer-Aided Design
Reference51 articles.
1. A non-parametric factor microfacet model for isotropic brdfs;Bagher Mahdi M.;ACM Transactions on Graphics,2016
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