This work aimed to investigate the potential of remote sensing to provide information on the spatial distribution of habitats in the Alpine region. Specifically, the performances of different classification methods, namely Maximum Likelihood (ML), Decision Tree (DT) and Support Vector Machine (SVM) were investigated for land-cover mapping using multitemporal RapidEye data. Results showed that SVM (85 % overall accuracy) outperformed ML (80 % overall accuracy) and DT (79 % overall accuracy). The resulted land-cover classes were subsequently reclassified into habitat classes using a spatial kernel approach. Findings suggest that the inclusion of solar radiation layers in the classification procedure as well as the use of multi-temporal images...
Due to concerns of recent earth climate changes such as an increase of earth surface temperature and...
Analysis of important grass species distribution in the Krkonoše Mts. tundra using remote sensing Ab...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
This work aimed to investigate the potential of remote sensing to provide information on the spatial...
Habitat loss is considered to be one of the greatest challenges currently facing society. An importa...
This study addressed the classification of multi-temporal satellite data from RapidEye by considerin...
The classification accuracy of remotely sensed data and its sensitivity to classification algorithms...
Habitat loss is considered to be one of the greatest challenges currently facing society. An importa...
Land cover information is essential for many diverse applications. Various natural resource manageme...
Taking advantage of Earth Observation (EO) data for monitoring land cover has attracted the attentio...
Land Use/Land Cover (LU/LC) of agricultural areas derived from remotely sensed data still remains ve...
Land use classification is an important part of many remote sensing applications. A lot of research ...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
Due to concerns of recent earth climate changes such as an increase of earth surface temperature and...
Analysis of important grass species distribution in the Krkonoše Mts. tundra using remote sensing Ab...
Classification of multispectral optical satellite data using machine learning techniques to derive l...
This work aimed to investigate the potential of remote sensing to provide information on the spatial...
Habitat loss is considered to be one of the greatest challenges currently facing society. An importa...
This study addressed the classification of multi-temporal satellite data from RapidEye by considerin...
The classification accuracy of remotely sensed data and its sensitivity to classification algorithms...
Habitat loss is considered to be one of the greatest challenges currently facing society. An importa...
Land cover information is essential for many diverse applications. Various natural resource manageme...
Taking advantage of Earth Observation (EO) data for monitoring land cover has attracted the attentio...
Land Use/Land Cover (LU/LC) of agricultural areas derived from remotely sensed data still remains ve...
Land use classification is an important part of many remote sensing applications. A lot of research ...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Remote sensing image classification is one of the most important techniques in image interpretation,...
Land use classification is an important part of many remote-sensing applications. A lot of research ...
Due to concerns of recent earth climate changes such as an increase of earth surface temperature and...
Analysis of important grass species distribution in the Krkonoše Mts. tundra using remote sensing Ab...
Classification of multispectral optical satellite data using machine learning techniques to derive l...