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Autori principali: Lin, Hongbin, Jiang, Yifan, Xu, Juangui, Xu, Jesse Jiaxi, Lu, Yi, Hu, Zhengyu, Chen, Ying-Cong, Wang, Hao
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.22668
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author Lin, Hongbin
Jiang, Yifan
Xu, Juangui
Xu, Jesse Jiaxi
Lu, Yi
Hu, Zhengyu
Chen, Ying-Cong
Wang, Hao
author_facet Lin, Hongbin
Jiang, Yifan
Xu, Juangui
Xu, Jesse Jiaxi
Lu, Yi
Hu, Zhengyu
Chen, Ying-Cong
Wang, Hao
contents 3D point cloud segmentation aims to assign semantic labels to individual points in a scene for fine-grained spatial understanding. Existing methods typically adopt data augmentation to alleviate the burden of large-scale annotation. However, most augmentation strategies only focus on local transformations or semantic recomposition, lacking the consideration of global structural dependencies within scenes. To address this limitation, we propose a graph-guided data augmentation framework with dual-level constraints for realistic 3D scene synthesis. Our method learns object relationship statistics from real-world data to construct guiding graphs for scene generation. Local-level constraints enforce geometric plausibility and semantic consistency between objects, while global-level constraints maintain the topological structure of the scene by aligning the generated layout with the guiding graph. Extensive experiments on indoor and outdoor datasets demonstrate that our framework generates diverse and high-quality augmented scenes, leading to consistent improvements in point cloud segmentation performance across various models.
format Preprint
id arxiv_https___arxiv_org_abs_2507_22668
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Graph-Guided Dual-Level Augmentation for 3D Scene Segmentation
Lin, Hongbin
Jiang, Yifan
Xu, Juangui
Xu, Jesse Jiaxi
Lu, Yi
Hu, Zhengyu
Chen, Ying-Cong
Wang, Hao
Computer Vision and Pattern Recognition
3D point cloud segmentation aims to assign semantic labels to individual points in a scene for fine-grained spatial understanding. Existing methods typically adopt data augmentation to alleviate the burden of large-scale annotation. However, most augmentation strategies only focus on local transformations or semantic recomposition, lacking the consideration of global structural dependencies within scenes. To address this limitation, we propose a graph-guided data augmentation framework with dual-level constraints for realistic 3D scene synthesis. Our method learns object relationship statistics from real-world data to construct guiding graphs for scene generation. Local-level constraints enforce geometric plausibility and semantic consistency between objects, while global-level constraints maintain the topological structure of the scene by aligning the generated layout with the guiding graph. Extensive experiments on indoor and outdoor datasets demonstrate that our framework generates diverse and high-quality augmented scenes, leading to consistent improvements in point cloud segmentation performance across various models.
title Graph-Guided Dual-Level Augmentation for 3D Scene Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.22668