Land use and land cover maps are vital sources of information for many applications. Recently, using high-resolution and open-access satellite images has become a preferred method for mapping land cover, especially over large areas. This study was designed to map the land cover and agricultural fields of a large area using Sentinel-1A synthetic aperture radar (SAR) images. Seven machine-learning methods were employed for image analyses. The Random Forest classifier algorithm outperformed the other machine-learning methods in the training step; thus, we selected it for further use and tuned its parameters. After several image processing steps, we classified the final image into 23 land cover classes and achieved an overall accuracy of 42% fo...
Providing information on the spatial distribution of habitat groups through land cover classificatio...
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...
Special Issue on the 39th Canadian Symposium on Remote Sensing (CSRS 2018)Land use and land cover ma...
Land use and land cover maps are vital sources of information for many uses. Recently, the use of hi...
This paper shows the efficiency of machine learning for improving land use/cover classification from...
Reliable information on land cover is required to assist and help in the decision-making process nee...
Land cover mapping has become an increasingly important source of information in agriculture. Farmer...
The European CORINE land cover mapping scheme is a standardized classification system with 44 land c...
The European CORINE land cover mapping scheme is a standardized classification system with 44 land c...
The development of remote sensing technology has redefined the approaches to the Earth's surface mon...
Satellite remote sensing imagery represents an attractive data source to monitor large regions with ...
Monitoring vegetation cover during winter is a major environmental and scientific issue in agricultu...
The U-net is nowadays among the most popular deep learning algorithms for land use/land cover (LULC)...
Land cover/land use (LULC) have an important impact on land degradation,erosion and water availabili...
Providing information on the spatial distribution of habitat groups through land cover classificatio...
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...
Special Issue on the 39th Canadian Symposium on Remote Sensing (CSRS 2018)Land use and land cover ma...
Land use and land cover maps are vital sources of information for many uses. Recently, the use of hi...
This paper shows the efficiency of machine learning for improving land use/cover classification from...
Reliable information on land cover is required to assist and help in the decision-making process nee...
Land cover mapping has become an increasingly important source of information in agriculture. Farmer...
The European CORINE land cover mapping scheme is a standardized classification system with 44 land c...
The European CORINE land cover mapping scheme is a standardized classification system with 44 land c...
The development of remote sensing technology has redefined the approaches to the Earth's surface mon...
Satellite remote sensing imagery represents an attractive data source to monitor large regions with ...
Monitoring vegetation cover during winter is a major environmental and scientific issue in agricultu...
The U-net is nowadays among the most popular deep learning algorithms for land use/land cover (LULC)...
Land cover/land use (LULC) have an important impact on land degradation,erosion and water availabili...
Providing information on the spatial distribution of habitat groups through land cover classificatio...
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...