International audienceIn this paper we present a framework to generate a land cover classification from coarse spatial resolution remotely sensed data acquired by NOAA-AVHRR sensor. We define a model for the pixels’ content and a process allowing to compute the individual proportions of the different land cover types for each pixel. The method is based on a linear mixture model of reflectances and exploits the good temporal frequency of NOAA acquisitions. The result provides a description in terms of land covers percentage within each NOAA pixel. A quality evaluation is performed on a test area for which high spatial resolution and temporal NOAA data are simultaneously available
Land cover information is a useful aid to our understanding and management of the environment. Commo...
Land use and land cover (LU/LC) classification of remotely sensed data is an important field of rese...
This article presents a set of techniques developed to classify land cover on a per-parcel (herein t...
International audienceIn this paper we present a framework to generate a land cover classification f...
International audienceLand cover classification requires both temporal and spatial information. Inde...
Abstract- Land cover classification requires both temporal and spatial information. Indeed, vegetati...
The multispectral and multitemporal classification approach of AVHRR data on specific dates was stud...
The multispectral and multitemporal classification approach of AVHRR data on specific dates was stud...
Two scale-dependent approaches in cartography are illustrated using remotely sensed data. The first ...
A problem with NOAA AVHRR imagery is that the intrinsic scale of spatial variation in land cover in ...
Due to the rapid advancements in the remote sensing field, there is an immense amount of data being ...
International audienceThis paper describes a methodology for systematic land use/land cover classifi...
Remote sensing studies have tended to be conducted at local to regional scales. However, recently at...
International audienceThis paper describes a methodology for providing systematic land use/land cove...
A problem with NOAA AVHRR imagery is that the intrinsic scale of spatial variation in land cover in ...
Land cover information is a useful aid to our understanding and management of the environment. Commo...
Land use and land cover (LU/LC) classification of remotely sensed data is an important field of rese...
This article presents a set of techniques developed to classify land cover on a per-parcel (herein t...
International audienceIn this paper we present a framework to generate a land cover classification f...
International audienceLand cover classification requires both temporal and spatial information. Inde...
Abstract- Land cover classification requires both temporal and spatial information. Indeed, vegetati...
The multispectral and multitemporal classification approach of AVHRR data on specific dates was stud...
The multispectral and multitemporal classification approach of AVHRR data on specific dates was stud...
Two scale-dependent approaches in cartography are illustrated using remotely sensed data. The first ...
A problem with NOAA AVHRR imagery is that the intrinsic scale of spatial variation in land cover in ...
Due to the rapid advancements in the remote sensing field, there is an immense amount of data being ...
International audienceThis paper describes a methodology for systematic land use/land cover classifi...
Remote sensing studies have tended to be conducted at local to regional scales. However, recently at...
International audienceThis paper describes a methodology for providing systematic land use/land cove...
A problem with NOAA AVHRR imagery is that the intrinsic scale of spatial variation in land cover in ...
Land cover information is a useful aid to our understanding and management of the environment. Commo...
Land use and land cover (LU/LC) classification of remotely sensed data is an important field of rese...
This article presents a set of techniques developed to classify land cover on a per-parcel (herein t...