Remote sensing image classification exploiting multiple sensors is a very challenging problem: data from different modalities are affected by spectral distortions and mis-alignments of all kinds, and this hampers re-using models built for one image to be used successfully in other scenes. In order to adapt and transfer models across image acquisitions, one must be able to cope with datasets that are not co-registered, acquired under different illumination and atmospheric conditions, by different sensors, and with scarce ground references. Traditionally, methods based on histogram matching have been used. However, they fail when densities have very different shapes or when there is no corresponding band to be matched between the images. An a...
© 2011 IEEE. In hyperspectral remote sensing image classification, multiple features, e.g., spectral...
Manifold alignment has become very popular in recent literature. Aligning data distributions prior t...
International audienceAutomatic land cover classification from satellite image time series is of par...
Remote sensing image classification exploiting multiple sensors is a very challenging problem: data ...
We introduce a method for manifold alignment of different modalities (or domains) of remote sensing ...
We introduce a method for manifold alignment of different modalities (or domains) of remote sensing ...
Analyzing remotely sensed images to obtain land cover classification maps is an effective approach f...
Domain adaptation in remote sensing aims at the automatic knowledge transfer between a set of multit...
Hyperspectral remote sensing is an important topic for deriving high-level information about the ear...
The re-use of available labeled samples to classify newly acquired data is a hot topic in pattern an...
The wealth of sensory data coming from different modalities has opened numerous opportunities for da...
Non-linear effects in hyperspectral data are the result of varying illumination conditions, angular ...
Aligning data distributions that underwent spectral distortions related to acquisition conditions is...
Aligning data distributions that underwent spectral distortions related to acquisition conditions is...
Earth observation through remote sensing images allows the accurate characterization and identificat...
© 2011 IEEE. In hyperspectral remote sensing image classification, multiple features, e.g., spectral...
Manifold alignment has become very popular in recent literature. Aligning data distributions prior t...
International audienceAutomatic land cover classification from satellite image time series is of par...
Remote sensing image classification exploiting multiple sensors is a very challenging problem: data ...
We introduce a method for manifold alignment of different modalities (or domains) of remote sensing ...
We introduce a method for manifold alignment of different modalities (or domains) of remote sensing ...
Analyzing remotely sensed images to obtain land cover classification maps is an effective approach f...
Domain adaptation in remote sensing aims at the automatic knowledge transfer between a set of multit...
Hyperspectral remote sensing is an important topic for deriving high-level information about the ear...
The re-use of available labeled samples to classify newly acquired data is a hot topic in pattern an...
The wealth of sensory data coming from different modalities has opened numerous opportunities for da...
Non-linear effects in hyperspectral data are the result of varying illumination conditions, angular ...
Aligning data distributions that underwent spectral distortions related to acquisition conditions is...
Aligning data distributions that underwent spectral distortions related to acquisition conditions is...
Earth observation through remote sensing images allows the accurate characterization and identificat...
© 2011 IEEE. In hyperspectral remote sensing image classification, multiple features, e.g., spectral...
Manifold alignment has become very popular in recent literature. Aligning data distributions prior t...
International audienceAutomatic land cover classification from satellite image time series is of par...