Pixel-based and object-based classifications are two commonly used approaches in extracting land cover information from remote sensing images. However, they each have their own inherent merits and limitations. This study, therefore, proposes a new classification method through the integration of pixel-based and object-based classifications (IPOC). Firstly, it employs pixel-based soft classification to obtain the class proportions of pixels to characterize the land cover details from pixel-scale properties. Secondly, it adopts area-to-point kriging to explore the class spatial dependence between objects for each pixel from object-based soft classification results. Thirdly, the class proportions of pixels and the class spatial dependence of p...
Object-oriented image classification has tremendous potential to improve classification accuracies o...
Land-cover classification is perhaps one of the most important applications of remote-sensing data. ...
Landuse and land-cover classification from high resolution imagery has been seen as challenging by t...
Superresolution mapping (SRM) is a widely used technique to address the mixed pixel problem in pixel...
Traditionally, remote sensing has employed pixel-based classification techniques to deal with Land U...
Remote sensing measurements provide an accurate and timeous record of the landscape components. This...
Conventional image classification based on pixels hinders the possibilities to obtain information co...
The development of robust object-oriented classification methods suitable for medium to high resolut...
Abstract:- Land cover maps can assist decision-makers in both the scientific and business activities...
Land use land cover (LULC) classification is a valuable asset for resource managers; in many fields ...
In this study, land cover types in Zonguldak test area were analysed on the basis of the classificat...
Although soft classification analyses can reduce problems such as those associated with mixed pixels...
A method was developed to transform a soft land cover classification into hard land cover classes at...
Land cover (LC) refers to what is actually present on the ground and provide insights into the under...
Land cover classification for high spatial resolution remote sensing images becomes a challenging wo...
Object-oriented image classification has tremendous potential to improve classification accuracies o...
Land-cover classification is perhaps one of the most important applications of remote-sensing data. ...
Landuse and land-cover classification from high resolution imagery has been seen as challenging by t...
Superresolution mapping (SRM) is a widely used technique to address the mixed pixel problem in pixel...
Traditionally, remote sensing has employed pixel-based classification techniques to deal with Land U...
Remote sensing measurements provide an accurate and timeous record of the landscape components. This...
Conventional image classification based on pixels hinders the possibilities to obtain information co...
The development of robust object-oriented classification methods suitable for medium to high resolut...
Abstract:- Land cover maps can assist decision-makers in both the scientific and business activities...
Land use land cover (LULC) classification is a valuable asset for resource managers; in many fields ...
In this study, land cover types in Zonguldak test area were analysed on the basis of the classificat...
Although soft classification analyses can reduce problems such as those associated with mixed pixels...
A method was developed to transform a soft land cover classification into hard land cover classes at...
Land cover (LC) refers to what is actually present on the ground and provide insights into the under...
Land cover classification for high spatial resolution remote sensing images becomes a challenging wo...
Object-oriented image classification has tremendous potential to improve classification accuracies o...
Land-cover classification is perhaps one of the most important applications of remote-sensing data. ...
Landuse and land-cover classification from high resolution imagery has been seen as challenging by t...