Irrespective of substantial research in land use/land cover (LULC) monitoring of urban area, hyperspectral data is not yet exploited effectively because of lack of local spectral resources and a practical reflectance calibration method. The objective of this research is to develop an effective methodology for urban LULC classification using image-based reflectance calibration methods: especially Vegetation-Impervious-Soil classes (VIS), using hyperspectral data. We used EO-1 Hyperion image of Pune City, India and assessed the suitability of different land covers as reflectance calibration surfaces. Furthermore, we performed LULC classification using different reflectance calibration methods such as Internal Area Relative Reflectance, Flat F...
Urban areas are characterised by a high heterogeneity of surfaces. In this context hyperspectral ima...
Update information on urban regions has been substantial for management communities. In this researc...
Accurate mapping and modeling of urban environments are critical for their efficient and successful ...
Urban land cover classification using remote sensing data is quite challenging due to spectrally and...
Studying the urban environment with its highly dynamic nature is a challenging and difficult task. U...
High spatial resolution hyperspectral imagery has shown considerable potential for deriving accurate...
With evolving technology of hyperspectral remote sensors, land surface analyses have been successful...
During last decade, needs for high resolution land cover data have been growing. Such knowledge is n...
Based on E0-1 Hyperion data, images which enclose the Higher Education Mega Center were cut, and end...
The availability of hyperspectral images with improved spectral and spatial resolutions provides the...
The majority of the world's population now resides in urban environments and information on the inte...
In contrast to widely used multispectral data, hyperspectral imagery resolves material-specific spec...
Due to rapid population growth over recent decades, changes of urban areas have significantly impact...
Urban land cover classification and mapping is an important and ongoing research field in monitoring...
Hyperspectral technology is useful for urban studies due to its capability in examining detailed spe...
Urban areas are characterised by a high heterogeneity of surfaces. In this context hyperspectral ima...
Update information on urban regions has been substantial for management communities. In this researc...
Accurate mapping and modeling of urban environments are critical for their efficient and successful ...
Urban land cover classification using remote sensing data is quite challenging due to spectrally and...
Studying the urban environment with its highly dynamic nature is a challenging and difficult task. U...
High spatial resolution hyperspectral imagery has shown considerable potential for deriving accurate...
With evolving technology of hyperspectral remote sensors, land surface analyses have been successful...
During last decade, needs for high resolution land cover data have been growing. Such knowledge is n...
Based on E0-1 Hyperion data, images which enclose the Higher Education Mega Center were cut, and end...
The availability of hyperspectral images with improved spectral and spatial resolutions provides the...
The majority of the world's population now resides in urban environments and information on the inte...
In contrast to widely used multispectral data, hyperspectral imagery resolves material-specific spec...
Due to rapid population growth over recent decades, changes of urban areas have significantly impact...
Urban land cover classification and mapping is an important and ongoing research field in monitoring...
Hyperspectral technology is useful for urban studies due to its capability in examining detailed spe...
Urban areas are characterised by a high heterogeneity of surfaces. In this context hyperspectral ima...
Update information on urban regions has been substantial for management communities. In this researc...
Accurate mapping and modeling of urban environments are critical for their efficient and successful ...