In this work we test the power of prediction of deep learning for detection of buildings from aerial laser scanner point cloud information. Automatic extraction of built features from remote sensing data is of extreme interest for many applications. In particular latest paradigms of 3D mapping of buildings, such as CityGML and BIM, can benefit from an initial determination of building geometries. In this work we used a LiDAR dataset of urban environment from the ISPRS benchmark on urban object detection. The dataset is labelled with eight classes, two were used for this investigation: roof and facades. The objective is to test how TensorFlow neural network for deep learning can predict these two classes. Results show that for “roof” and “fa...
Three-dimensional (3D) urban models have gained interest because of their applications in many use-c...
There is an increasing need for digital twins of cities and their base maps, 3D city models. Creatin...
Urban research is progressively moving towards fine-grained simulation and requires more granular an...
In this work we test the power of prediction of deep learning for detection of buildings from aerial...
This paper reports on a building detection approach based on deep learning (DL) using the fusion of ...
© 2018 Faten Hamed Nahhas et al. This paper reports on a building detection approach based on deep l...
The detection of buildings in the city is essential in several geospatial domains and for decision-m...
With recent advances in technology, 3D point clouds are getting more and more frequently requested a...
In recent years, with the development of the high resolution data acquisition technologies, many dif...
Due to their usefulness in various implementations, such as energy evaluation, visibility analysis, ...
Automated reconstruction of detailed semantic 3D city models is challenging due to the need for high...
A Laser scanning is a relatively recent remote sensing method which nevertheless quickly gained a pr...
Buildings play an essential role in urban construction, planning, and climate studies. Extracting d...
Robust and reliable automatic building detection and segmentation from aerial images/point clouds ha...
The development of MLS LiDAR acquisition with devices mounted on vehicles or drones, make it possibl...
Three-dimensional (3D) urban models have gained interest because of their applications in many use-c...
There is an increasing need for digital twins of cities and their base maps, 3D city models. Creatin...
Urban research is progressively moving towards fine-grained simulation and requires more granular an...
In this work we test the power of prediction of deep learning for detection of buildings from aerial...
This paper reports on a building detection approach based on deep learning (DL) using the fusion of ...
© 2018 Faten Hamed Nahhas et al. This paper reports on a building detection approach based on deep l...
The detection of buildings in the city is essential in several geospatial domains and for decision-m...
With recent advances in technology, 3D point clouds are getting more and more frequently requested a...
In recent years, with the development of the high resolution data acquisition technologies, many dif...
Due to their usefulness in various implementations, such as energy evaluation, visibility analysis, ...
Automated reconstruction of detailed semantic 3D city models is challenging due to the need for high...
A Laser scanning is a relatively recent remote sensing method which nevertheless quickly gained a pr...
Buildings play an essential role in urban construction, planning, and climate studies. Extracting d...
Robust and reliable automatic building detection and segmentation from aerial images/point clouds ha...
The development of MLS LiDAR acquisition with devices mounted on vehicles or drones, make it possibl...
Three-dimensional (3D) urban models have gained interest because of their applications in many use-c...
There is an increasing need for digital twins of cities and their base maps, 3D city models. Creatin...
Urban research is progressively moving towards fine-grained simulation and requires more granular an...