We study the problem of landuse characterization at the urban-object level using deep learning algorithms. Traditionally, this task is performed by surveys or manual photo interpretation, which are expensive and difficult to update regularly. We seek to characterize usages at the single object level and to differentiate classes such as educational institutes, hospitals and religious places by visual cues contained in side-view pictures from Google Street View (GSV). These pictures provide geo-referenced information not only about the material composition of the objects but also about their actual usage, which otherwise is difficult to capture using other classical sources of data such as aerial imagery. Since the GSV database is regularly u...
National audienceEstimating the density of the 'urban fabric' land cover classes is of major importa...
Land use classification is the process of characterising the land by the purposes of usage. It is si...
International audienceThis work shows how deep learning techniques can benefit to remote sensing. We...
We study the problem of landuse characterization at the urban-object level using deep learning algor...
Landuse characterization is important for urban planning. It is traditionally performed with field s...
This paper presents a study on the use of freely available, geo-referenced pictures from Google Stre...
According to the Food and Agriculture Organization of the United Nations, “landuse is characterized ...
Urban land use is key to rational urban planning and management. Traditional land use classification...
This paper extends recent research into the usefulness of volunteered photos for land cover extracti...
Urban land use is key to rational urban planning and management. Traditional land use classification...
This study takes one step further to complement the application of a method for mapping informal gre...
Urbanization is a global phenomenon; with more than half of the world’s population residing in urban...
Monitoring and understanding urban development requires up-to-date information on multiple urban lan...
Deep Learning (DL) based identification and detection of elements in urban spaces through Earth Obse...
International audienceThe need for reliable and exhaustive data on land use is a major issue in plan...
National audienceEstimating the density of the 'urban fabric' land cover classes is of major importa...
Land use classification is the process of characterising the land by the purposes of usage. It is si...
International audienceThis work shows how deep learning techniques can benefit to remote sensing. We...
We study the problem of landuse characterization at the urban-object level using deep learning algor...
Landuse characterization is important for urban planning. It is traditionally performed with field s...
This paper presents a study on the use of freely available, geo-referenced pictures from Google Stre...
According to the Food and Agriculture Organization of the United Nations, “landuse is characterized ...
Urban land use is key to rational urban planning and management. Traditional land use classification...
This paper extends recent research into the usefulness of volunteered photos for land cover extracti...
Urban land use is key to rational urban planning and management. Traditional land use classification...
This study takes one step further to complement the application of a method for mapping informal gre...
Urbanization is a global phenomenon; with more than half of the world’s population residing in urban...
Monitoring and understanding urban development requires up-to-date information on multiple urban lan...
Deep Learning (DL) based identification and detection of elements in urban spaces through Earth Obse...
International audienceThe need for reliable and exhaustive data on land use is a major issue in plan...
National audienceEstimating the density of the 'urban fabric' land cover classes is of major importa...
Land use classification is the process of characterising the land by the purposes of usage. It is si...
International audienceThis work shows how deep learning techniques can benefit to remote sensing. We...