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Highlight-aware two-stream network for single-image SVBRDF acquisition

Authors :
Ling-Qi Yan
Yanwen Guo
Lei Wang
Jie Guo
Chengzhi Tao
Shuichang Lai
Yuelong Cai
Source :
ACM Transactions on Graphics. 40:1-14
Publication Year :
2021
Publisher :
Association for Computing Machinery (ACM), 2021.

Abstract

This paper addresses the task of estimating spatially-varying reflectance (i.e., SVBRDF) from a single, casually captured image. Central to our method is a highlight-aware (HA) convolution operation and a two-stream neural network equipped with proper training losses. Our HA convolution, as a novel variant of standard (ST) convolution, directly modulates convolution kernels under the guidance of automatically learned masks representing potentially overexposed highlight regions. It helps to reduce the impact of strong specular highlights on diffuse components and at the same time, hallucinates plausible contents in saturated regions. Considering that variation of saturated pixels also contains important cues for inferring surface bumpiness and specular components, we design a two-stream network to extract features from two different branches stacked by HA convolutions and ST convolutions, respectively. These two groups of features are further fused in an attention-based manner to facilitate feature selection of each SVBRDF map. The whole network is trained end to end with a new perceptual adversarial loss which is particularly useful for enhancing the texture details. Such a design also allows the recovered material maps to be disentangled. We demonstrate through quantitative analysis and qualitative visualization that the proposed method is effective to recover clear SVBRDFs from a single casually captured image, and performs favorably against state-of-the-arts. Since we impose very few constraints on the capture process, even a non-expert user can create high-quality SVBRDFs that cater to many graphical applications.

Details

ISSN :
15577368 and 07300301
Volume :
40
Database :
OpenAIRE
Journal :
ACM Transactions on Graphics
Accession number :
edsair.doi.dedup.....f32e262ae36020acd0f775f2532a206c
Full Text :
https://doi.org/10.1145/3450626.3459854