Abstract. Land use mapping is one of the major applications of remote sensing. While most studies focus on the advanced remote sensing thematic classification algorithms for land use mapping, the scale factor in remote sensing data classification was less recognized. Previous studies showed that while the multi-scale characteristics exist in the remotely sensed data for land use classification, some classes are mostly accurately classified at a finer resolution, and others at coarser ones. Thus, it is helpful to improve the overall classification accuracy by mapping different land use classes at different scales. In this paper, a framework for improving the land use classification accuracy by exploiting the multi-scale properties of remotel...
Multispectral remote sensing images are widely used for landuse/landcover (LULC) classification. Per...
Two phenomena of similar objects with different spectra and different objects with similar spectrum ...
Pixel-based and object-based classifications are two commonly used approaches in extracting land cov...
Our general objective in this research was to design, develop, implement, and evaluate advanced clas...
Part 1: GIS, GPS, RS and Precision FarmingInternational audienceThe paper summarized pre-existing re...
The purpose of the present study was to review, evaluate and explore methodologies in classifying re...
Land use/land cover maps derived from remotely sensed imagery are often insufficient in quality for ...
<div><p>The classification of land cover based on satellite data is important for many areas of scie...
It is a challenge to obtain accurate result in remote sensing images classification, which is affect...
Automatic classification of remotely sensed digital data is recognised as a robust and efficient met...
Geospatial analysis involves application of statistical methods, algorithms and information retrieva...
Knowledge of grassland classification in a timely and accurate manner is essential for grassland res...
Land cover data represent a fundamental data source for various types of scientific research. The cl...
Much remote sensing (RS) research focuses on fusing, i.e., combining, multi-resolution/multi-sensor...
Landcover classification of remotely sensed data has found many useful applications in industries su...
Multispectral remote sensing images are widely used for landuse/landcover (LULC) classification. Per...
Two phenomena of similar objects with different spectra and different objects with similar spectrum ...
Pixel-based and object-based classifications are two commonly used approaches in extracting land cov...
Our general objective in this research was to design, develop, implement, and evaluate advanced clas...
Part 1: GIS, GPS, RS and Precision FarmingInternational audienceThe paper summarized pre-existing re...
The purpose of the present study was to review, evaluate and explore methodologies in classifying re...
Land use/land cover maps derived from remotely sensed imagery are often insufficient in quality for ...
<div><p>The classification of land cover based on satellite data is important for many areas of scie...
It is a challenge to obtain accurate result in remote sensing images classification, which is affect...
Automatic classification of remotely sensed digital data is recognised as a robust and efficient met...
Geospatial analysis involves application of statistical methods, algorithms and information retrieva...
Knowledge of grassland classification in a timely and accurate manner is essential for grassland res...
Land cover data represent a fundamental data source for various types of scientific research. The cl...
Much remote sensing (RS) research focuses on fusing, i.e., combining, multi-resolution/multi-sensor...
Landcover classification of remotely sensed data has found many useful applications in industries su...
Multispectral remote sensing images are widely used for landuse/landcover (LULC) classification. Per...
Two phenomena of similar objects with different spectra and different objects with similar spectrum ...
Pixel-based and object-based classifications are two commonly used approaches in extracting land cov...