OCCAM: Occlusion-aware Completeness via Coverage Analysis with Monte Carlo Sampling

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Date
2025
Journal Title
Journal ISSN
Volume Title
Publisher
The Eurographics Association
Abstract
Occlusion is a common challenge in indoor 3D scanning, often leading to incomplete scene reconstructions due to unobserved surfaces. Estimating it during the scan process can improve the quality of the acquired scenes tremendously. However, most existing methods for estimating scan completeness require access to ground-truth data, an assumption that rarely holds in practical settings. We introduce OCCAM (Occlusion-aware Completeness via Coverage Analysis with Monte Carlo sampling), a lightweight method that estimates global scan coverage without requiring surface reconstruction. It casts randomized rays from within the scanned volume to identify visibility gaps, without relying on mesh connectivity or external reference geometry. In contrast to occupancy grid mapping methods, which model local space coverage from the scanner's perspective, OCCAM evaluates broader scene visibility to detect whether large surface regions remain unscanned. Experimental results on synthetic and real-world benchmark datasets show that the proposed method is fast to compute (processing 100K-point scans in under one second), simple to implement, and produces a compact signal that supports both coverage assessment and scan guidance in indoor environments.
Description

CCS Concepts: General and reference → Measurement; Estimation; Computing methodologies → Ray tracing; Graphics input devices; Point-based models

        
@inproceedings{
10.2312:cgvc.20251203
, booktitle = {
Computer Graphics and Visual Computing (CGVC)
}, editor = {
Sheng, Yun
and
Slingsby, Aidan
}, title = {{
OCCAM: Occlusion-aware Completeness via Coverage Analysis with Monte Carlo Sampling
}}, author = {
Fuentes Perez, Lizeth Joseline
and
Romero Calla, Luciano Arnaldo
and
Pajarola, Renato
and
Turek, Javier
}, year = {
2025
}, publisher = {
The Eurographics Association
}, ISBN = {
978-3-03868-293-6
}, DOI = {
10.2312/cgvc.20251203
} }
Citation