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A survey on deep learning-based Monte Carlo denoising

Yuchi Huo, Sung‐Eui Yoon

2021Computational Visual Media65 citationsDOIOpen Access PDF

Abstract

Monte Carlo (MC) integration is used ubiquitously in realistic image synthesis because of its flexibility and generality. However, the integration has to balance estimator bias and variance, which causes visually distracting noise with low sample counts. Existing solutions fall into two categories, in-process sampling schemes and post-processing reconstruction schemes. This report summarizes recent trends in the post-processing reconstruction scheme. Recent years have seen increasing attention and significant progress in denoising MC rendering with deep learning, by training neural networks to reconstruct denoised rendering results from sparse MC samples. Many of these techniques show promising results in real-world applications, and this report aims to provide an assessment of these approaches for practitioners and researchers.

Topics & Concepts

Computer scienceGeneralityRendering (computer graphics)Monte Carlo methodEstimatorArtificial intelligenceControl variatesDeep learningNoise reductionComputer graphicsArtificial neural networkVariance reductionMachine learningFlexibility (engineering)Markov chain Monte CarloStatisticsHybrid Monte CarloMathematicsPsychologyPsychotherapistBayesian probabilityImage and Signal Denoising MethodsAdvanced Vision and ImagingAdvanced Image Processing Techniques