This Paper has been Presented for Promotion at the University of KhartoumMapping pattern and spatial distribution of land use/cover (LULC) has long been based on remotely sensed data. In the recent past, efforts to improve reliability of LULC maps have seen a proliferation of image classification techniques. Despite these efforts, derived LULC maps are still often judged to be of insufficient quality for operational applications due to disagreement between generated maps and reference data. In this study we sought to pursue two objectives, firstly, to test the new generation multispectral RapidEye imagery classification output using machine-learning random forest (RF) and support vector machines (SVM) classifiers in a heterog...
Landscape fragmentation is quite dominant in Mediterranean regions and poses significant problems in...
The identification, delineation, and mapping of landcover is integral for resource management and pl...
Since the launch of the first land observation satellite Landsat-1 in 1972, many machine learning al...
This paper had been presented for promotion at the university of Khartoum. To get the full text ple...
In previous classification studies, three non-parametric classifiers, Random Forest (RF), k-Nearest ...
In previous classification studies, three non-parametric classifiers, Random Forest (RF), k-Nearest ...
The classification accuracy of remotely sensed data and its sensitivity to classification algorithms...
The production of land cover maps through satellite image classification is a frequent task in remot...
Accurate and reliable land use/land cover (LULC) information obtained by remote sensing technology i...
Coastal wetlands areas are heterogeneous, highly dynamic areas with complex interactions between ter...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
With the latest development and increasing availability of high spatial resolution sensors, earth ob...
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...
Mangrove forests, as an essential component of the coastal zones in tropical and subtropical areas, ...
Landscape fragmentation is quite dominant in Mediterranean regions and poses significant problems in...
The identification, delineation, and mapping of landcover is integral for resource management and pl...
Since the launch of the first land observation satellite Landsat-1 in 1972, many machine learning al...
This paper had been presented for promotion at the university of Khartoum. To get the full text ple...
In previous classification studies, three non-parametric classifiers, Random Forest (RF), k-Nearest ...
In previous classification studies, three non-parametric classifiers, Random Forest (RF), k-Nearest ...
The classification accuracy of remotely sensed data and its sensitivity to classification algorithms...
The production of land cover maps through satellite image classification is a frequent task in remot...
Accurate and reliable land use/land cover (LULC) information obtained by remote sensing technology i...
Coastal wetlands areas are heterogeneous, highly dynamic areas with complex interactions between ter...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
With the latest development and increasing availability of high spatial resolution sensors, earth ob...
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...
Mangrove forests, as an essential component of the coastal zones in tropical and subtropical areas, ...
Landscape fragmentation is quite dominant in Mediterranean regions and poses significant problems in...
The identification, delineation, and mapping of landcover is integral for resource management and pl...
Since the launch of the first land observation satellite Landsat-1 in 1972, many machine learning al...