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Main Authors: Rauch, Lukas, Braml, Thomas
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.14721
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author Rauch, Lukas
Braml, Thomas
author_facet Rauch, Lukas
Braml, Thomas
contents The significant effort required to annotate data for new training datasets hinders computer vision research and machine learning in the construction industry. This work explores adapting standard datasets and the latest transformer model architectures for point cloud semantic segmentation in the context of shell construction sites. Unlike common approaches focused on object segmentation of building interiors and furniture, this study addressed the challenges of segmenting complex structural components in Architecture, Engineering, and Construction (AEC). We establish a baseline through supervised training and a custom validation dataset, evaluate the cross-domain inference with large-scale indoor datasets, and utilize transfer learning to maximize segmentation performance with minimal new data. The findings indicate that with minimal fine-tuning, pre-trained transformer architectures offer an effective strategy for building component segmentation. Our results are promising for automating the annotation of new, previously unseen data when creating larger training resources and for the segmentation of frequently recurring objects.
format Preprint
id arxiv_https___arxiv_org_abs_2502_14721
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-dataset synergistic in supervised learning to pre-label structural components in point clouds from shell construction scenes
Rauch, Lukas
Braml, Thomas
Computer Vision and Pattern Recognition
The significant effort required to annotate data for new training datasets hinders computer vision research and machine learning in the construction industry. This work explores adapting standard datasets and the latest transformer model architectures for point cloud semantic segmentation in the context of shell construction sites. Unlike common approaches focused on object segmentation of building interiors and furniture, this study addressed the challenges of segmenting complex structural components in Architecture, Engineering, and Construction (AEC). We establish a baseline through supervised training and a custom validation dataset, evaluate the cross-domain inference with large-scale indoor datasets, and utilize transfer learning to maximize segmentation performance with minimal new data. The findings indicate that with minimal fine-tuning, pre-trained transformer architectures offer an effective strategy for building component segmentation. Our results are promising for automating the annotation of new, previously unseen data when creating larger training resources and for the segmentation of frequently recurring objects.
title Multi-dataset synergistic in supervised learning to pre-label structural components in point clouds from shell construction scenes
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2502.14721