In recent research, fully supervised Deep Learning (DL) techniques and large amounts of pointwise labels are employed to train a segmentation network to be applied to buildings’ point clouds. However, fine-labelled buildings’ point clouds are hard to find and manually annotating pointwise labels is time-consuming and expensive. Consequently, the application of fully supervised DL for semantic segmentation of buildings’ point clouds at LoD3 level is severely limited. To address this issue, we propose a novel label-efficient DL network that obtains per-point semantic labels of LoD3 buildings’ point clouds with limited supervision. In general, it consists of two steps. The first step (Autoencoder – AE) is composed of a Dynamic Graph Convolutio...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
This master thesis provides in-depth explanations of how deep learning and graph theory can be used ...
In the geomatics domain the use of deep learning, a subset of machine learning, is becoming more and...
In recent years, Deep Learning (DL) techniques and large amounts of pointwise labels are employed to...
In recent research, fully supervised Deep Learning (DL) techniques and large amounts of pointwise la...
In current research, fully supervised Deep Learning (DL) techniques are employed to train a segmenta...
In current research, fully supervised Deep Learning (DL) techniques are employed to train a segmenta...
Abstract. As a result of the success of Deep Learning (DL) techniques, DL-based approaches for extra...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
As Building Information Modelling (BIM) thrives, geometry becomes no longer sufficient; an ever incr...
During the last decade, the use of semantic models of 3D buildings and structures kept growing, fost...
Historical heritage is demanding robust pipelines for obtaining Heritage Building Information Modeli...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
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...
This master thesis provides in-depth explanations of how deep learning and graph theory can be used ...
In the geomatics domain the use of deep learning, a subset of machine learning, is becoming more and...
In recent years, Deep Learning (DL) techniques and large amounts of pointwise labels are employed to...
In recent research, fully supervised Deep Learning (DL) techniques and large amounts of pointwise la...
In current research, fully supervised Deep Learning (DL) techniques are employed to train a segmenta...
In current research, fully supervised Deep Learning (DL) techniques are employed to train a segmenta...
Abstract. As a result of the success of Deep Learning (DL) techniques, DL-based approaches for extra...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
As Building Information Modelling (BIM) thrives, geometry becomes no longer sufficient; an ever incr...
During the last decade, the use of semantic models of 3D buildings and structures kept growing, fost...
Historical heritage is demanding robust pipelines for obtaining Heritage Building Information Modeli...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
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...
This master thesis provides in-depth explanations of how deep learning and graph theory can be used ...
In the geomatics domain the use of deep learning, a subset of machine learning, is becoming more and...