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Auteurs principaux: Wang, Wang, Shi, Mingyu, Jiang, Jun, Ma, Wenqian, Liu, Chong, Narazaki, Yasutaka, Wang, Xuguang
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2507.05814
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author Wang, Wang
Shi, Mingyu
Jiang, Jun
Ma, Wenqian
Liu, Chong
Narazaki, Yasutaka
Wang, Xuguang
author_facet Wang, Wang
Shi, Mingyu
Jiang, Jun
Ma, Wenqian
Liu, Chong
Narazaki, Yasutaka
Wang, Xuguang
contents As critical transportation infrastructure, bridges face escalating challenges from aging and deterioration, while traditional manual inspection methods suffer from low efficiency. Although 3D point cloud technology provides a new data-driven paradigm, its application potential is often constrained by the incompleteness of real-world data, which results from missing labels and scanning occlusions. To overcome the bottleneck of insufficient generalization in existing synthetic data methods, this paper proposes a systematic framework for generating 3D bridge data. This framework can automatically generate complete point clouds featuring component-level instance annotations, high-fidelity color, and precise normal vectors. It can be further extended to simulate the creation of diverse and physically realistic incomplete point clouds, designed to support the training of segmentation and completion networks, respectively. Experiments demonstrate that a PointNet++ model trained with our synthetic data achieves a mean Intersection over Union (mIoU) of 84.2% in real-world bridge semantic segmentation. Concurrently, a fine-tuned KT-Net exhibits superior performance on the component completion task. This research offers an innovative methodology and a foundational dataset for the 3D visual analysis of bridge structures, holding significant implications for advancing the automated management and maintenance of infrastructure.
format Preprint
id arxiv_https___arxiv_org_abs_2507_05814
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Empowering Bridge Digital Twins by Bridging the Data Gap with a Unified Synthesis Framework
Wang, Wang
Shi, Mingyu
Jiang, Jun
Ma, Wenqian
Liu, Chong
Narazaki, Yasutaka
Wang, Xuguang
Computer Vision and Pattern Recognition
Artificial Intelligence
As critical transportation infrastructure, bridges face escalating challenges from aging and deterioration, while traditional manual inspection methods suffer from low efficiency. Although 3D point cloud technology provides a new data-driven paradigm, its application potential is often constrained by the incompleteness of real-world data, which results from missing labels and scanning occlusions. To overcome the bottleneck of insufficient generalization in existing synthetic data methods, this paper proposes a systematic framework for generating 3D bridge data. This framework can automatically generate complete point clouds featuring component-level instance annotations, high-fidelity color, and precise normal vectors. It can be further extended to simulate the creation of diverse and physically realistic incomplete point clouds, designed to support the training of segmentation and completion networks, respectively. Experiments demonstrate that a PointNet++ model trained with our synthetic data achieves a mean Intersection over Union (mIoU) of 84.2% in real-world bridge semantic segmentation. Concurrently, a fine-tuned KT-Net exhibits superior performance on the component completion task. This research offers an innovative methodology and a foundational dataset for the 3D visual analysis of bridge structures, holding significant implications for advancing the automated management and maintenance of infrastructure.
title Empowering Bridge Digital Twins by Bridging the Data Gap with a Unified Synthesis Framework
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2507.05814