Adaptive Filtering for Progressive Monte Carlo Image Rendering
Date issued
2000
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
University of West Bohemia
Abstract
Image filtering is often applied as a post-process to Monte Carlo generated pictures, in order to reduce
noise. In this paper we present an algorithm based on density estimation techniques that applies an energy
preserving adaptive kernel filter to individual samples during image rendering. The used kernel widths
diminish as the number of samples goes up, ensuring a reasonable noise versus bias trade-off at any time.
This results in a progressive algorithm, that still converges asymptotically to a correct solution. Results
show that general noise as well as spike noise can effectively be reduced. Many interesting extensions are
possible, making this a very promising technique for Monte Carlo image synthesis.
Description
Subject(s)
globální osvětlení, Monte Carlo, odhad hustoty, trasování cesty, filtrování obrazu
Citation
WSCG '2000: Conference proceeding: The 8th International Conference in Central Europe on Computers Graphics, Visualization and Interaktive Digital Media '2000 in cooperation with EUROGRAPHICS and IFIP WG 5.10: University of West Bohemia, Plzen, Czech republic, February 7 - 10, 2000, p. 220-227.