© 2023, The Author(s).Automated Heritage Building Information Modelling (HBIM) from the point cloud data has been researched in the last decade as HBIM can be the integrated data model to bring together diverse sources of complex cultural content relating to heritage buildings. However, HBIM modelling from the scan data of heritage buildings is mainly manual and image processing techniques are insufficient for the segmentation of point cloud data to speed up and enhance the current workflow for HBIM modelling. Artificial Intelligence (AI) based deep learning methods such as PointNet are introduced in the literature for point cloud segmentation. Yet, their use is mainly for manufactured and clear geometric shapes and components. To what exte...
In the Digital Cultural Heritage (DCH) domain, the semantic segmentation of 3D Point Clouds with Dee...
Historical heritage is demanding robust pipelines for preserving, enhancing, and disseminating its p...
In the Cultural Heritage (CH) domain, the semantic segmentation of 3D point clouds with Deep Learnin...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
In the Digital Cultural Heritage (DCH) domain, the semantic segmentation of 3D Point Clouds with Dee...
As a result of the development of Artificial Intelligence (AI) techniques, in recent years, machine ...
International audienceCreating three-dimensional as-built models from point clouds is still a challe...
The growing availability of three-dimensional (3D) data, such as point clouds, coming from Light Det...
Historical heritage is demanding robust pipelines for obtaining Heritage Building Information Modeli...
Historical heritage is demanding robust pipelines for obtaining Heritage Building Information Modeli...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
The interest in high-resolution semantic 3D models of historical buildings continuously increased du...
This dissertation addresses the need for digitizing cultural heritage using Building Information Mod...
In the Digital Cultural Heritage (DCH) domain, the semantic segmentation of 3D Point Clouds with Dee...
Historical heritage is demanding robust pipelines for preserving, enhancing, and disseminating its p...
In the Cultural Heritage (CH) domain, the semantic segmentation of 3D point clouds with Deep Learnin...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
In the Digital Cultural Heritage (DCH) domain, the semantic segmentation of 3D Point Clouds with Dee...
As a result of the development of Artificial Intelligence (AI) techniques, in recent years, machine ...
International audienceCreating three-dimensional as-built models from point clouds is still a challe...
The growing availability of three-dimensional (3D) data, such as point clouds, coming from Light Det...
Historical heritage is demanding robust pipelines for obtaining Heritage Building Information Modeli...
Historical heritage is demanding robust pipelines for obtaining Heritage Building Information Modeli...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
The interest in high-resolution semantic 3D models of historical buildings continuously increased du...
This dissertation addresses the need for digitizing cultural heritage using Building Information Mod...
In the Digital Cultural Heritage (DCH) domain, the semantic segmentation of 3D Point Clouds with Dee...
Historical heritage is demanding robust pipelines for preserving, enhancing, and disseminating its p...
In the Cultural Heritage (CH) domain, the semantic segmentation of 3D point clouds with Deep Learnin...