Planning sustainable use of land resources and environmental monitoring benefit from accurate and detailed forest information. The basis of accurate forest information is data on the spatial extent of forests. In Norway land resource maps have been carefully created by field visits and aerial image interpretation for over four decades with periodic updating. However, due to prioritization of agricultural and built-up areas, and high requirements with respect to the map accuracy, forest areas and outfields have not been frequently updated. Consequently, in some part of the country, the map has not been updated since its first creation in the 1960s. The Sentinel-2 satellite acquires images with high spatial and temporal resolution which provi...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Planning sustainable use of land resources and environmental monitoring benefit from accurate and de...
Sustainable forest management requires accurate and up-to-date baseline data regarding forest struct...
The mapping of land cover using remotely sensed data is most effective when a robust classification ...
Over the last several decades, thanks to improvements in and the diversification of open-access sate...
The Norwegian forest habitat inventory (Miljøregistrering i skog, MiS), is a system used to classify...
Over the last several decades, thanks to improvements in and the diversification of open-access sate...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
Description of the subject. Understanding the current situation and evolution of forests is essentia...
Sentinel-2, with high spatial resolution bands and increased number of spectral channels, has provid...
Thanks to mainly ESA and USGS, a large bulk of free images of the Earth is readily available nowaday...
Forest canopy cover (FCC) is an important ecological parameter of forest ecosystems, and is correlat...
Presented research investigates the possibility of applying the newest, free available satellite ima...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Planning sustainable use of land resources and environmental monitoring benefit from accurate and de...
Sustainable forest management requires accurate and up-to-date baseline data regarding forest struct...
The mapping of land cover using remotely sensed data is most effective when a robust classification ...
Over the last several decades, thanks to improvements in and the diversification of open-access sate...
The Norwegian forest habitat inventory (Miljøregistrering i skog, MiS), is a system used to classify...
Over the last several decades, thanks to improvements in and the diversification of open-access sate...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
Description of the subject. Understanding the current situation and evolution of forests is essentia...
Sentinel-2, with high spatial resolution bands and increased number of spectral channels, has provid...
Thanks to mainly ESA and USGS, a large bulk of free images of the Earth is readily available nowaday...
Forest canopy cover (FCC) is an important ecological parameter of forest ecosystems, and is correlat...
Presented research investigates the possibility of applying the newest, free available satellite ima...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
Classification of multispectral optical satellite data using machine learning techniques to derive l...