Although a large number of new image classification algorithms have been developed, they are rarely tested with the same classification task. In this research, with the same Landsat Thematic Mapper (TM) data set and the same classification scheme over Guangzhou City, China, we tested two unsupervised and 13 supervised classification algorithms, including a number of machine learning algorithms that became popular in remote sensing during the past 20 years. Our analysis focused primarily on the spectral information provided by the TM data. We assessed all algorithms in a per-pixel classification decision experiment and all supervised algorithms in a segment-based experiment. We found that when sufficiently representative training samples w...
When talking about land cover, we need to find a proper way to extract information from aerial or sa...
Abstract Classification is the technique by which real world objectsland covers are identified withi...
Pattern recognition in urban areas is one of the most challenging issues in classifying satellite r...
Abstract Three different training strategies often used for supervised classification-single pixel, ...
Satellite image classification is crucial in various applications such as urban planning, environmen...
In this study, a classification and performance evaluation framework for the recognition of urban pa...
With the development of urbanization and expansion of urban land use, the need to up to date maps, h...
Supervised classification is the commonly used method for extracting ground information from images....
Remote sensing methods used to generate base maps to analyze the urban environment rely predominantl...
The identification, delineation, and mapping of landcover is integral for resource management and pl...
International audienceThe need for reliable and exhaustive data on land use is a major issue in plan...
In this study, a new classification algorithm in which only the selected pixels have been attempted ...
Detailed information about built-up areas is valuable for mapping complex urban environments. Althou...
Many works dealing with the problem of urban detection in large scale have been published, but very...
The aim of this study was to evaluate three different strategies to improve classification accuracy ...
When talking about land cover, we need to find a proper way to extract information from aerial or sa...
Abstract Classification is the technique by which real world objectsland covers are identified withi...
Pattern recognition in urban areas is one of the most challenging issues in classifying satellite r...
Abstract Three different training strategies often used for supervised classification-single pixel, ...
Satellite image classification is crucial in various applications such as urban planning, environmen...
In this study, a classification and performance evaluation framework for the recognition of urban pa...
With the development of urbanization and expansion of urban land use, the need to up to date maps, h...
Supervised classification is the commonly used method for extracting ground information from images....
Remote sensing methods used to generate base maps to analyze the urban environment rely predominantl...
The identification, delineation, and mapping of landcover is integral for resource management and pl...
International audienceThe need for reliable and exhaustive data on land use is a major issue in plan...
In this study, a new classification algorithm in which only the selected pixels have been attempted ...
Detailed information about built-up areas is valuable for mapping complex urban environments. Althou...
Many works dealing with the problem of urban detection in large scale have been published, but very...
The aim of this study was to evaluate three different strategies to improve classification accuracy ...
When talking about land cover, we need to find a proper way to extract information from aerial or sa...
Abstract Classification is the technique by which real world objectsland covers are identified withi...
Pattern recognition in urban areas is one of the most challenging issues in classifying satellite r...