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Laboratoire d'InfoRmatique en Image et Systèmes d'information

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Laboratoire d'InfoRmatique en Image et Systèmes d'information
UMR 5205 CNRS / INSA de Lyon / Université Claude Bernard Lyon 1 / Université Lumière Lyon 2 / École Centrale de Lyon
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Noise Reduction for Monte Carlo Rendering: Image Space and Gradient-Domain Techniques

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Matthias Zwicker, professor at the University of Bern, head of the Computer Graphics Group at the Institute for Computer Science and Applied Mathematics

What
  • Séminaire mensuel
  • Séminaire
When Oct 06, 2015
from 10:30 AM to 12:00 PM
Where Salle C3, Bâtiment Nautibus, Université Lyon I
Contact Name
Contact Phone +33 (0)4.72.43.14.34
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With the ongoing path tracing revolution in the movie industry, there has been a renewed interest in noise reduction for realistic image synthesis using Monte Carlo rendering. Monte Carlo algorithms are attractive because they are conceptually simple, general, and based on a physical model of light transport. Noise artifacts, however, have remained a challenge for real world applications. In this talk, I will present two strategies that we have been pursuing in our research to address this problem. First, I will discuss recent advances in image space adaptive sampling and reconstruction. I will describe an approach that leverages auxiliary image features and cross-bilateral filtering in combination with statistical error estimation to obtain surprisingly effective results. This technique has already made an impact in practical movie production. Second, I will present gradient-domain rendering, which is a form of correlated sampling for Monte Carlo rendering, followed by Poisson reconstruction of the final image. I will outline a theoretical analysis that shows how this approach reduces variance in the final output compared to conventional Monte Carlo sampling. 

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