Published July 2020 | Supplemental Material + Published
Journal Article Open

Sliced optimal transport sampling

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Abstract

In this paper, we introduce a numerical technique to generate sample distributions in arbitrary dimension for improved accuracy of Monte Carlo integration. We point out that optimal transport offers theoretical bounds on Monte Carlo integration error, and that the recently-introduced numerical framework of sliced optimal transport (SOT) allows us to formulate a novel and efficient approach to generating well-distributed high-dimensional pointsets. The resulting sliced optimal transport sampling, solely involving repeated 1D solves, is particularly simple and efficient for the common case of a uniform density over a d-dimensional ball. We also construct a volume-preserving map from a d-ball to a d-cube (generalizing the Shirley-Chiu mapping to arbitrary dimensions) to offer fast SOT sampling over d-cubes. We provide ample numerical evidence of the improvement in Monte Carlo integration accuracy that SOT sampling brings compared to existing QMC techniques, and derive a projective variant for rendering which rivals, and at times outperforms, current sampling strategies using low-discrepancy sequences or optimized samples.

Additional Information

© 2020 Association for Computing Machinery. We thank Filippo Santambrogio and the reviewers for their helpful comments. This work was partially funded by ANR-16-CE33-0026 (CALiTrOp) and ANR-16-CE23-0009 (ROOT). MD gratefully acknowledges the hospitality of ShanghaiTech University during his sabbatical.

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