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A Compact Representation of Measured BRDFs Using Neural Processes

Chuankun Zheng, Ruzhang Zheng, Rui Wang, Shuang Zhao, Hujun Bao

2021ACM Transactions on Graphics27 citationsDOI

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.

Topics & Concepts

Computer scienceRepresentation (politics)Artificial intelligenceSet (abstract data type)Flexibility (engineering)Space (punctuation)Artificial neural networkFunction (biology)Compression (physics)ENCODEMathematicsChemistryLawOperating systemProgramming languageComposite materialMaterials sciencePolitical scienceBiologyPoliticsStatisticsGeneEvolutionary biologyBiochemistryComputer Graphics and Visualization TechniquesTime Series Analysis and ForecastingGenerative Adversarial Networks and Image Synthesis