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Deep Combiner for Independent and Correlated Pixel Estimates

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Abstract
Monte Carlo integration is an efficient method to solve a high-dimensional integral in light transport simulation, but it typically produces noisy images due to its stochastic nature. Many existing methods, such as image denoising and gradient-domain reconstruction, aim to mitigate this noise by introducing some form of correlation among pixels. While those existing methods reduce noise, they are known to still suffer from method-specific residual noise or systematic errors. We propose a unified framework that reduces such remaining errors. Our framework takes a pair of images, one with independent estimates, and the other with the corresponding correlated estimates. Correlated pixel estimates are generated by various existing methods such as denoising and gradient-domain rendering. Our framework then combines the two images via a novel combination kernel. We model our combination kernel as a weighting function with a deep neural network that exploits the correlation among pixel estimates. To improve the robustness of our framework for outliers, we additionally propose an extension to handle multiple image buffers. The results demonstrate that our unified framework can successfully reduce the error of existing methods while treating them as black-boxes.
Author(s)
Back, JongheeHua, Binh-SonHachisuka, ToshiyaMoon, Bochang
Issued Date
2020-12
Type
Article
DOI
10.1145/3414685.3417847
URI
https://scholar.gist.ac.kr/handle/local/11799
Publisher
ASSOCIATION COMPUTING MACHINERY
Citation
ACM TRANSACTIONS ON GRAPHICS, v.39, no.6, pp.1 - 12
ISSN
0730-0301
Appears in Collections:
Department of AI Convergence > 1. Journal Articles
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