Plane Detection and Ranking via Model Information Optimization
Daoxin Zhong, Jun Li, Meng Yee Michael Chuah

TL;DR
This paper introduces a model information optimization framework for plane detection in depth images, improving accuracy and reducing false positives compared to traditional RANSAC methods, especially in complex scenes.
Contribution
It proposes a novel information-based approach that estimates the true number of planes and ranks their quality, integrating sensor physics and noise models.
Findings
More accurate plane parameter estimation than RANSAC
Effective in complex real-world scenes
Accelerated by neural network segmentation
Abstract
Plane detection from depth images is a crucial subtask with broad robotic applications, often accomplished by iterative methods such as Random Sample Consensus (RANSAC). While RANSAC is a robust strategy with strong probabilistic guarantees, the ambiguity of its inlier threshold criterion makes it susceptible to false positive plane detections. This issue is particularly prevalent in complex real-world scenes, where the true number of planes is unknown and multiple planes coexist. In this paper, we aim to address this limitation by proposing a generalised framework for plane detection based on model information optimization. Building on previous works, we treat the observed depth readings as discrete random variables, with their probability distributions constrained by the ground truth planes. Various models containing different candidate plane constraints are then generated through…
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