Point-level Uncertainty Evaluation of Mobile Laser Scanning Point Clouds
- URL: http://arxiv.org/abs/2510.24773v1
- Date: Fri, 24 Oct 2025 21:30:52 GMT
- Title: Point-level Uncertainty Evaluation of Mobile Laser Scanning Point Clouds
- Authors: Ziyang Xu, Olaf Wysocki, Christoph Holst,
- Abstract summary: This study proposes a machine learning-based framework for point-level uncertainty evaluation.<n>It learns the relationship between local geometric features and point-level errors.<n> Experimental results demonstrate that both models can effectively capture the nonlinear relationships between geometric characteristics and uncertainty.
- Score: 4.164044593574969
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Reliable quantification of uncertainty in Mobile Laser Scanning (MLS) point clouds is essential for ensuring the accuracy and credibility of downstream applications such as 3D mapping, modeling, and change analysis. Traditional backward uncertainty modeling heavily rely on high-precision reference data, which are often costly or infeasible to obtain at large scales. To address this issue, this study proposes a machine learning-based framework for point-level uncertainty evaluation that learns the relationship between local geometric features and point-level errors. The framework is implemented using two ensemble learning models, Random Forest (RF) and XGBoost, which are trained and validated on a spatially partitioned real-world dataset to avoid data leakage. Experimental results demonstrate that both models can effectively capture the nonlinear relationships between geometric characteristics and uncertainty, achieving mean ROC-AUC values above 0.87. The analysis further reveals that geometric features describing elevation variation, point density, and local structural complexity play a dominant role in predicting uncertainty. The proposed framework offers a data-driven perspective of uncertainty evaluation, providing a scalable and adaptable foundation for future quality control and error analysis of large-scale point clouds.
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