Imaging spectroscopy in the remote sensing is an ever emerging platform that has offered the hyperspectral imaging (HSI) which delivers the Earth’s object information in hundreds of bands. HSI integrates conventional imaging with spectroscopy to get rich spectral and spatial features of the object. However, the challenges associated with HSI are its huge dimensionality and data redundancy that requests huge space, complex computations, and lengthier processing time. Therefore, this study aims to find the optimal bands to characterize the roof surfaces using supervised classifiers. To deal with high dimensionality of hyperspectral data, this study assesses the band selection method over data transformation methods. This study provides the co...
Urban environments are complex because many different artificial and natural objects occur in close ...
Urban areas are characterised by a high heterogeneity of surfaces. In this context hyperspectral ima...
Limitations and deficiencies of different remote sensing sensors in extraction of different objects ...
Impervious surface discrimination and mapping are important in urban and environ-mental studies. Con...
Mapping of surface materials in urban areas using aerial imagery is a challenging task. This is beca...
Hyperspectral imagery is a rich source of spectral information and plays very important role in disc...
In urban areas, information concerning very high resolution land cover and especially material maps ...
Monitoring roofing materials and conditions are important to improve urban management and support th...
Mapping areas in an urban environment can be challenging due to various materials and manufactured s...
Land monitoring requires remote sensing data, which varies in its spectral and spatial resolution. R...
Hyperspectral data are valuable for urban studies because of the continuous narrow bands and high sp...
This study presents our findings on the fusion of Imaging Spectroscopy (IS) and LiDAR data for urban...
International audienceDespite the high richness of information content provided by airborne hyperspe...
In urban areas, information concerning very high resolution land cover and especially material maps ...
A hyperspectral image (HSI) is a collection of several narrow-band images that span a wide spectral ...
Urban environments are complex because many different artificial and natural objects occur in close ...
Urban areas are characterised by a high heterogeneity of surfaces. In this context hyperspectral ima...
Limitations and deficiencies of different remote sensing sensors in extraction of different objects ...
Impervious surface discrimination and mapping are important in urban and environ-mental studies. Con...
Mapping of surface materials in urban areas using aerial imagery is a challenging task. This is beca...
Hyperspectral imagery is a rich source of spectral information and plays very important role in disc...
In urban areas, information concerning very high resolution land cover and especially material maps ...
Monitoring roofing materials and conditions are important to improve urban management and support th...
Mapping areas in an urban environment can be challenging due to various materials and manufactured s...
Land monitoring requires remote sensing data, which varies in its spectral and spatial resolution. R...
Hyperspectral data are valuable for urban studies because of the continuous narrow bands and high sp...
This study presents our findings on the fusion of Imaging Spectroscopy (IS) and LiDAR data for urban...
International audienceDespite the high richness of information content provided by airborne hyperspe...
In urban areas, information concerning very high resolution land cover and especially material maps ...
A hyperspectral image (HSI) is a collection of several narrow-band images that span a wide spectral ...
Urban environments are complex because many different artificial and natural objects occur in close ...
Urban areas are characterised by a high heterogeneity of surfaces. In this context hyperspectral ima...
Limitations and deficiencies of different remote sensing sensors in extraction of different objects ...