EARS: efficiency-aware russian roulette and splitting

Jul 22, 2022ยท
Alex Rath
,
Pascal Grittmann
Sebastian Herholz
Sebastian Herholz
,
Philippe Weier
,
Philipp Slusallek
ยท 0 min read
Abstract
Russian roulette and splitting are widely used techniques to increase the efficiency of Monte Carlo estimators. But, despite their popularity, there is little work on how to best apply them. Most existing approaches rely on simple heuristics based on, e.g., surface albedo and roughness. Their efficiency often hinges on user-controlled parameters. We instead iteratively learn optimal Russian roulette and splitting factors during rendering, using a simple and lightweight data structure. Given perfect estimates of variance and cost, our fixed-point iteration provably converges to the optimal Russian roulette and splitting factors that maximize the rendering efficiency. In our application to unidirectional path tracing, we achieve consistent and significant speed-ups over the state of the art.
Type
Publication
In Transactions on Graphics