<div><p>The classification of land cover based on satellite data is important for many areas of scientific research. Unfortunately, some traditional land cover classification methods (e.g. known as supervised classification) are very labor-intensive and subjective because of the required human involvement. Jiang et al. proposed a simple but robust method for land cover classification using a prior classification map and a current multispectral remote sensing image. This new method has proven to be a suitable classification method; however, its drawback is that it is a semi-automatic method because the key parameters cannot be selected automatically. In this study, we propose an approach in which the two key parameters are chosen automatical...
Knowledge of grassland classification in a timely and accurate manner is essential for grassland res...
Land use and land cover (LU/LC) classification of remotely sensed data is an important field of rese...
Automatic classification of remotely sensed digital data is recognised as a robust and efficient met...
The classification of land cover based on satellite data is important for many areas of scientific r...
Land cover data represent a fundamental data source for various types of scientific research. The cl...
Abstract. Land use mapping is one of the major applications of remote sensing. While most studies fo...
Our general objective in this research was to design, develop, implement, and evaluate advanced clas...
Quantitative remote sensing methods have been widely adopted for land use/cover information extracti...
Several methods exist for remote sensing image classification. They include supervised and unsupervi...
New sets of satellite sensors are frequently being added to the constellation of remote sensing sate...
Adopting a low spatial resolution remote sensing imagery to get an accurate estimation of Land Use L...
Modern geoinformation technologies, such as remote sensing satellite missions and classification met...
Land use/land cover maps derived from remotely sensed imagery are often insufficient in quality for ...
Remotely sensed imagery is one of the most important data sources for large-scale and multi-temporal...
Fine resolution land cover information is a vital foundation of Earth science. In this paper, a nove...
Knowledge of grassland classification in a timely and accurate manner is essential for grassland res...
Land use and land cover (LU/LC) classification of remotely sensed data is an important field of rese...
Automatic classification of remotely sensed digital data is recognised as a robust and efficient met...
The classification of land cover based on satellite data is important for many areas of scientific r...
Land cover data represent a fundamental data source for various types of scientific research. The cl...
Abstract. Land use mapping is one of the major applications of remote sensing. While most studies fo...
Our general objective in this research was to design, develop, implement, and evaluate advanced clas...
Quantitative remote sensing methods have been widely adopted for land use/cover information extracti...
Several methods exist for remote sensing image classification. They include supervised and unsupervi...
New sets of satellite sensors are frequently being added to the constellation of remote sensing sate...
Adopting a low spatial resolution remote sensing imagery to get an accurate estimation of Land Use L...
Modern geoinformation technologies, such as remote sensing satellite missions and classification met...
Land use/land cover maps derived from remotely sensed imagery are often insufficient in quality for ...
Remotely sensed imagery is one of the most important data sources for large-scale and multi-temporal...
Fine resolution land cover information is a vital foundation of Earth science. In this paper, a nove...
Knowledge of grassland classification in a timely and accurate manner is essential for grassland res...
Land use and land cover (LU/LC) classification of remotely sensed data is an important field of rese...
Automatic classification of remotely sensed digital data is recognised as a robust and efficient met...