Providing land use/land cover change maps through the use of satellite imagery is very challenging and demanding in terms of human interaction, mainly because of limited process automation. One main cause is that most of land use/land cover change applications require multi-temporal acquisitions over the same area, that introduces the need for accurate pre-processing of the dataset, in both geo-referencing and radiometry. Moreover, single multi-spectral images can be hundred of megabytes in size and therefore image time series are even more difficult to be handled and processed in real time. The approach here proposed foresees the use of a robust land cover classification system named SOIL MAPPER® to reduce input data size by assigning...
Classifying land cover is perhaps the most common application of remote sensing, yet classification ...
Land cover mapping relates to identifying the types of features present on the surface of the earth....
The study of land cover and land use dynamics are fundamental to understanding the radical changes t...
The problem of (better) exploiting long-term satellite image databases is not yet resolved. Meanwhil...
Since the advent of the "Multispectral Scanner" (MSS) on Landsat, which was operated from ...
International audienceThis paper proposes a land cover classification methodology in agricultural co...
Land cover maps are essential for characterizing the biophysical properties of the Earth’s land area...
A rule-based classification model was developed to derive land-cover information from a large set of...
International audienceThis paper describes a methodology for systematic land use/land cover classifi...
Abstract—A land cover classification service is introduced toward addressing current challenges on t...
Remotely sensed imagery is an attractive source of information for mapping and monitoring land cover...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
Land cover classification for the CAP LTER study region using ASTER imagery acquired September 19, 2...
Remotely sensed imagery is an attractive source of information for mapping and monitoring land cover...
Aim: To evaluate the use of time-series of Landsat sensor data acquired over an annual cycle for map...
Classifying land cover is perhaps the most common application of remote sensing, yet classification ...
Land cover mapping relates to identifying the types of features present on the surface of the earth....
The study of land cover and land use dynamics are fundamental to understanding the radical changes t...
The problem of (better) exploiting long-term satellite image databases is not yet resolved. Meanwhil...
Since the advent of the "Multispectral Scanner" (MSS) on Landsat, which was operated from ...
International audienceThis paper proposes a land cover classification methodology in agricultural co...
Land cover maps are essential for characterizing the biophysical properties of the Earth’s land area...
A rule-based classification model was developed to derive land-cover information from a large set of...
International audienceThis paper describes a methodology for systematic land use/land cover classifi...
Abstract—A land cover classification service is introduced toward addressing current challenges on t...
Remotely sensed imagery is an attractive source of information for mapping and monitoring land cover...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
Land cover classification for the CAP LTER study region using ASTER imagery acquired September 19, 2...
Remotely sensed imagery is an attractive source of information for mapping and monitoring land cover...
Aim: To evaluate the use of time-series of Landsat sensor data acquired over an annual cycle for map...
Classifying land cover is perhaps the most common application of remote sensing, yet classification ...
Land cover mapping relates to identifying the types of features present on the surface of the earth....
The study of land cover and land use dynamics are fundamental to understanding the radical changes t...