We introduce BuildingNet: (a) a large-scale dataset of 3D building models whose exteriors are consistently labeled, and (b) a graph neural network that labels building meshes by analyzing spatial and structural relations of their geometric primitives. To create our dataset, we used crowdsourcing combined with expert guidance, resulting in 513K annotated mesh primitives, grouped into 292K semantic part components across 2K building models. The dataset covers several building categories, such as houses, churches, skyscrapers, town halls, libraries, and castles. We include a benchmark for evaluating mesh and point cloud labeling. Buildings have more challenging structural complexity compared to objects in existing benchmarks (e.g., ShapeNet, P...
The high-precision generation of 3D building models is a controversial research topic in the field o...
In recent years, Deep Learning (DL) techniques and large amounts of pointwise labels are employed to...
City modeling consists in building a semantic generalized model of the surface of urban objects. The...
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...
Historically, architects have established different approaches to constructing their buildings on th...
During the last decade, the use of semantic models of 3D buildings and structures kept growing, fost...
The vast scale of buildings poses many challenges to the flow of information. Automatically creating...
International audienceCity modeling consists in building a semantic generalized model of the surface...
Automated reconstruction of detailed semantic 3D city models is challenging due to the need for high...
The dataset contains 2.904 geometries of single-family houses in the form of annotated Point Clouds,...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
In recent research, fully supervised Deep Learning (DL) techniques and large amounts of pointwise la...
The interest in high-resolution semantic 3D models of historical buildings continuously increased du...
Abstract. The lack of suitable information in 3D models of buildings and cities is still a strong li...
The high-precision generation of 3D building models is a controversial research topic in the field o...
In recent years, Deep Learning (DL) techniques and large amounts of pointwise labels are employed to...
City modeling consists in building a semantic generalized model of the surface of urban objects. The...
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...
Historically, architects have established different approaches to constructing their buildings on th...
During the last decade, the use of semantic models of 3D buildings and structures kept growing, fost...
The vast scale of buildings poses many challenges to the flow of information. Automatically creating...
International audienceCity modeling consists in building a semantic generalized model of the surface...
Automated reconstruction of detailed semantic 3D city models is challenging due to the need for high...
The dataset contains 2.904 geometries of single-family houses in the form of annotated Point Clouds,...
Cultural Heritage is a testimony of past human activity, and, as such, its objects exhibit great var...
In recent research, fully supervised Deep Learning (DL) techniques and large amounts of pointwise la...
The interest in high-resolution semantic 3D models of historical buildings continuously increased du...
Abstract. The lack of suitable information in 3D models of buildings and cities is still a strong li...
The high-precision generation of 3D building models is a controversial research topic in the field o...
In recent years, Deep Learning (DL) techniques and large amounts of pointwise labels are employed to...
City modeling consists in building a semantic generalized model of the surface of urban objects. The...