This study aims at the robust automatic detection of buildings with a gable roof in varying rural areas from very-high-resolution aerial images. The originality of our approach resides in a custom-made design extracting key features close to modeling, such as e.g. roof ridges and gutters. In this way, we allow a large freedom in roof appearances. The proposed method is based on a combination of two hypotheses. First, it exploits the physical properties of gable roofs and detects straight line-segments within non-vegetated and non-farmland areas, as possibilities of occurring roof-ridges. Second, for each of these candidate roof-ridges, the likely roof-gutter positions are estimated for both sides of the line segment, resulting in a set of p...
The knowledge of roof shapes is essential for the creation of 3D building models. Many experts and r...
This paper focuses on the automatic detection of hot spots on heterogenic roofscapes in high resolut...
Natural hazards risk assessment requires data on the built environment. This paper reports an image ...
This study aims at the robust automatic detection of buildings with a gable roof in varying rural ar...
This paper describes an improved version of our system for robust detection of buildings with a gabl...
In this paper, we examine the use of machine learning to improve a rooftop detection process, one st...
The paper presents a new data-driven approach to generate CityGML building models from airborne lase...
In this paper, a new approach for automated extraction of building boundary from high resolution ima...
Abstract. We present a technique to extract complex suburban roofs from sets of aerial images. Becau...
In this paper, we examine the use of machine learning to improve a rooftop detection process, which ...
The success of the United Nations Sustainable Development Goals relies on temporally frequent socioe...
This paper introduces a semi-automatic method for buildings extraction through multiple-view aerial ...
Segmentation of buildings in urban areas, especially dense urban areas, by using remotely sensed ima...
In this paper, we present a novel strategy for roof segmentation from aerial images (orthophotoplans...
Automatic extraction of buildings from digital images aims at detection of buildings from digital im...
The knowledge of roof shapes is essential for the creation of 3D building models. Many experts and r...
This paper focuses on the automatic detection of hot spots on heterogenic roofscapes in high resolut...
Natural hazards risk assessment requires data on the built environment. This paper reports an image ...
This study aims at the robust automatic detection of buildings with a gable roof in varying rural ar...
This paper describes an improved version of our system for robust detection of buildings with a gabl...
In this paper, we examine the use of machine learning to improve a rooftop detection process, one st...
The paper presents a new data-driven approach to generate CityGML building models from airborne lase...
In this paper, a new approach for automated extraction of building boundary from high resolution ima...
Abstract. We present a technique to extract complex suburban roofs from sets of aerial images. Becau...
In this paper, we examine the use of machine learning to improve a rooftop detection process, which ...
The success of the United Nations Sustainable Development Goals relies on temporally frequent socioe...
This paper introduces a semi-automatic method for buildings extraction through multiple-view aerial ...
Segmentation of buildings in urban areas, especially dense urban areas, by using remotely sensed ima...
In this paper, we present a novel strategy for roof segmentation from aerial images (orthophotoplans...
Automatic extraction of buildings from digital images aims at detection of buildings from digital im...
The knowledge of roof shapes is essential for the creation of 3D building models. Many experts and r...
This paper focuses on the automatic detection of hot spots on heterogenic roofscapes in high resolut...
Natural hazards risk assessment requires data on the built environment. This paper reports an image ...