Fusion of very high spatial resolution multispectral (VHR) images and lower spatial resolution image time series with more spectral bands can improve land cover classification, combining geometric and semantic advantages of both sources. This study presents a workflow to extract the extent of urban areas using decision-level fusion of individual classifications on Sentinel2 (S2) and SPOT6 satellite images. First, both sources are classified individually in five classes, using state-of-the-art supervised classification approaches and Convolutional Neural Networks. Obtained results are merged in order to extract buildings as accurately as possible. Then, detected buildings are merged again with the S2 classification to extract urban area; a p...
Monitoring of the human-induced changes and the availability of reliable and methodologically consis...
This paper proposes a framework to fuse multi-seasonal Sentinel-2 images, with application on LCZ-de...
satellite stereo imagery, it is hard to reach precise change detection results using only DSMs. Ther...
International audienceLa fusion d'images multispectrales à très haute résolution spatiale (THR) avec...
Exploiting multitemporal Sentinel-2 images for urban land cover classification has become an importa...
This work introduces two feature fusion techniques that exploit previously developed algorithms for ...
Information extraction from multi-sensor remote sensing imagery is an important and challenging task...
International audienceUrban areas might be defined as a complex and dynamic system that needs specif...
The characterization of urban areas can be improved considerably by combining spectral and spatial f...
The ability to automatically generate large-area land-use/land-cover (LU/LC) classification maps fro...
In this paper a new approach based on the fusion of Sentinel-1 and Sentinel-2 products to map urban ...
International audienceThis communication intends to enhance the contribution of a sensor fusion meth...
Detailed land cover information is valuable for mapping complex urban environments. Recent enhanceme...
The practical use of very high resolution visible and near-infrared (VNIR) data is still growing (IK...
The practical use of very high resolution visible and near-infrared (VNIR) data is still growing (IK...
Monitoring of the human-induced changes and the availability of reliable and methodologically consis...
This paper proposes a framework to fuse multi-seasonal Sentinel-2 images, with application on LCZ-de...
satellite stereo imagery, it is hard to reach precise change detection results using only DSMs. Ther...
International audienceLa fusion d'images multispectrales à très haute résolution spatiale (THR) avec...
Exploiting multitemporal Sentinel-2 images for urban land cover classification has become an importa...
This work introduces two feature fusion techniques that exploit previously developed algorithms for ...
Information extraction from multi-sensor remote sensing imagery is an important and challenging task...
International audienceUrban areas might be defined as a complex and dynamic system that needs specif...
The characterization of urban areas can be improved considerably by combining spectral and spatial f...
The ability to automatically generate large-area land-use/land-cover (LU/LC) classification maps fro...
In this paper a new approach based on the fusion of Sentinel-1 and Sentinel-2 products to map urban ...
International audienceThis communication intends to enhance the contribution of a sensor fusion meth...
Detailed land cover information is valuable for mapping complex urban environments. Recent enhanceme...
The practical use of very high resolution visible and near-infrared (VNIR) data is still growing (IK...
The practical use of very high resolution visible and near-infrared (VNIR) data is still growing (IK...
Monitoring of the human-induced changes and the availability of reliable and methodologically consis...
This paper proposes a framework to fuse multi-seasonal Sentinel-2 images, with application on LCZ-de...
satellite stereo imagery, it is hard to reach precise change detection results using only DSMs. Ther...