Quantifying robustness: 3D tree point cloud skeletonization with smart-tree in noisy domains
Extracting tree skeletons from 3D tree point clouds is challenged by noise and incomplete data. While our prior work (Dobbs et al., in: Iberian conference on pattern recognition and image analysis, Springer, Berlin, pp. 351–362, 2023) introduced a deep learning approach for approximating tree branch...
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Veröffentlicht in: | Pattern analysis and applications : PAA 2024-03, Vol.27 (1), Article 28 |
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Sprache: | eng |
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Zusammenfassung: | Extracting tree skeletons from 3D tree point clouds is challenged by noise and incomplete data. While our prior work (Dobbs et al., in: Iberian conference on pattern recognition and image analysis, Springer, Berlin, pp. 351–362, 2023) introduced a deep learning approach for approximating tree branch medial axes, its robustness against various types of noise has not been thoroughly evaluated. This paper addresses this gap. Specifically, we simulate real-world noise challenges by introducing 3D Perlin noise (to represent subtractive noise) and Gaussian noise (to mimic additive noise). To facilitate this evaluation, we introduce a new synthetic tree point cloud dataset, available at
https://github.com/uc-vision/synthetic-trees-II
. Our results indicate that our deep learning-based skeletonization method is tolerant to both additive and subtractive noise. |
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ISSN: | 1433-7541 1433-755X |
DOI: | 10.1007/s10044-024-01238-3 |