In this article, we present a new dataset designed for the semantic segmentation of images and point clouds of historic buildings, aimed at automating and accelerating the 3D modeling process in the scan-to-BIM context. The dataset includes five historic buildings and provides two types of data: images obtained from photogrammetric surveys and the corresponding georeferenced point clouds. Both datasets are accompanied by ground truth, identifying 10 classes representative of the main construction elements. Additionally, the dataset includes the intrinsic and extrinsic camera parameters and the transformation matrix to align the point clouds with the camera reference system. The annotation of the point clouds was performed manually, while the image annotation was generated through a projection process based on the labels assigned to the point clouds.

A photogrammetric image-point dataset for the semantic segmentation of heritage buildings / Pellis E.; Masiero A.; Betti M.; Tucci G.; Grussenmeyer P.. - In: DATA IN BRIEF. - ISSN 2352-3409. - STAMPA. - 60:(2025), pp. 111661.0-111661.0. [10.1016/j.dib.2025.111661]

A photogrammetric image-point dataset for the semantic segmentation of heritage buildings

Pellis E.;Betti M.;Tucci G.;
2025

Abstract

In this article, we present a new dataset designed for the semantic segmentation of images and point clouds of historic buildings, aimed at automating and accelerating the 3D modeling process in the scan-to-BIM context. The dataset includes five historic buildings and provides two types of data: images obtained from photogrammetric surveys and the corresponding georeferenced point clouds. Both datasets are accompanied by ground truth, identifying 10 classes representative of the main construction elements. Additionally, the dataset includes the intrinsic and extrinsic camera parameters and the transformation matrix to align the point clouds with the camera reference system. The annotation of the point clouds was performed manually, while the image annotation was generated through a projection process based on the labels assigned to the point clouds.
2025
60
0
0
Pellis E.; Masiero A.; Betti M.; Tucci G.; Grussenmeyer P.
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1425972
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