International audienceDespite the high richness of information content provided by airborne hyperspectral data, detailed urban land-cover mapping is still a challenging task. An important topic in hyperspectral remote sensing is the issue of high dimensionality, which is commonly addressed by dimensionality reduction techniques. While many studies focus on methodological developments in data reduction, less attention is paid to the assessment of the proposed methods in detailed urban hyperspectral land-cover mapping, using state-of-the-art image classification approaches. In this study we evaluate the potential of two unsupervised data reduction techniques, the Autoassociative Neural Network (AANN) and the BandClust method – the first a tra...
Image classification of roofing types, road pavements, and natural features can assist land-cover ma...
Imaging spectroscopy in the remote sensing is an ever emerging platform that has offered the hypersp...
n this paper the potential of neural networks has been applied to hyperspectral data and exploited e...
International audienceDespite the high richness of information content provided by airborne hyperspe...
Urban land cover classification using remote sensing data is quite challenging due to spectrally and...
High spatial resolution hyperspectral imagery has shown considerable potential for deriving accurate...
Accurate and spatially detailed mapping of complex urban environments is essential for land managers...
Urban environments are complex because many different artificial and natural objects occur in close ...
Mapping area types with remote sensing may be challenging in densely populated urban areas because o...
ABSTRACT Hyperspectral sensors provide a rich amount of information that, if appropriately used, may...
During last decade, needs for high resolution land cover data have been growing. Such knowledge is n...
Rapid technological advances in airborne hyperspectral and lidar systems paved the way for using mac...
Quantitative methods for mapping sub-pixel land cover fractions are gaining increasing attention, pa...
Accurate mapping and modeling of urban environments are critical for their efficient and successful ...
ABSTRACT Spectral band selection is one of the most important research area in hyperspectral remote...
Image classification of roofing types, road pavements, and natural features can assist land-cover ma...
Imaging spectroscopy in the remote sensing is an ever emerging platform that has offered the hypersp...
n this paper the potential of neural networks has been applied to hyperspectral data and exploited e...
International audienceDespite the high richness of information content provided by airborne hyperspe...
Urban land cover classification using remote sensing data is quite challenging due to spectrally and...
High spatial resolution hyperspectral imagery has shown considerable potential for deriving accurate...
Accurate and spatially detailed mapping of complex urban environments is essential for land managers...
Urban environments are complex because many different artificial and natural objects occur in close ...
Mapping area types with remote sensing may be challenging in densely populated urban areas because o...
ABSTRACT Hyperspectral sensors provide a rich amount of information that, if appropriately used, may...
During last decade, needs for high resolution land cover data have been growing. Such knowledge is n...
Rapid technological advances in airborne hyperspectral and lidar systems paved the way for using mac...
Quantitative methods for mapping sub-pixel land cover fractions are gaining increasing attention, pa...
Accurate mapping and modeling of urban environments are critical for their efficient and successful ...
ABSTRACT Spectral band selection is one of the most important research area in hyperspectral remote...
Image classification of roofing types, road pavements, and natural features can assist land-cover ma...
Imaging spectroscopy in the remote sensing is an ever emerging platform that has offered the hypersp...
n this paper the potential of neural networks has been applied to hyperspectral data and exploited e...