This paper addresses the problem of semantic image labeling of urban remote sensing images into land cover maps. We exploit the prior knowledge that cities are composed of comparable spatial arrangements of urban objects, such as buildings. To do so, we cluster OpenStreetMap (OSM) building footprints into groups with similar local statistics, corresponding to different types of urban zones. We use the per-cluster expected building fraction to correct for over- and underrepresentation of classes predicted by a Convolutional Neural Network (CNN), using a Conditional Random Field (CRF). Results indicate a substantial improvement in both numerical and visual accuracy of the labeled maps
In this paper we address the problem of urban optical imagery classification by developing a convolu...
Information extracted from aerial photographs has found applications in a wide range of areas inclu...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
This paper addresses the problem of semantic image labeling of urban remote sensing images into land...
This paper addresses the problem of semantic image labeling of urban remote sensing images into land...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
Information extracted from aerial photographs has found applications in a wide range of areas inclu...
In this paper we address the problem of urban optical imagery classification by developing a convolu...
Information extracted from aerial photographs has found applications in a wide range of areas inclu...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
This paper addresses the problem of semantic image labeling of urban remote sensing images into land...
This paper addresses the problem of semantic image labeling of urban remote sensing images into land...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
International audienceNew challenges in remote sensing impose the necessity of designing pixel class...
This is the CITY-OSM dataset used in the journal publication "Learning Aerial Image Segmentation Fro...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
Information extracted from aerial photographs has found applications in a wide range of areas inclu...
In this paper we address the problem of urban optical imagery classification by developing a convolu...
Information extracted from aerial photographs has found applications in a wide range of areas inclu...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...