MonteBoxFinder: Detecting and Filtering Primitives to Fit a Noisy Point Cloud

Michaël Ramamonjisoa*, Sinisa Stekovic, Vincent Lepetit

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference paperpeer-review

Abstract

We present MonteBoxFinder, a method that, given a noisy input point cloud, fits cuboids to the input scene. Our primary contribution is a discrete optimization algorithm that, from a dense set of initially detected cuboids, is able to efficiently filter good boxes from the noisy ones. Inspired by recent applications of MCTS to scene understanding problems, we develop a stochastic algorithm that is, by design, more efficient for our task. Indeed, the quality of a fit for a cuboid arrangement is invariant to the order in which the cuboids are added into the scene. We develop several search baselines for our problem and demonstrate, on the ScanNet dataset, that our approach is more efficient and precise. Finally, we strongly believe that our core algorithm is very general and that it could be extended to many other problems in 3D scene understanding.
Original languageEnglish
Title of host publicationMonteBoxFinder: Detecting and Filtering Primitives to Fit a Noisy Point Cloud
Publication statusPublished - Oct 2023

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