The spatial distribution information of remote sensing images can be derived by the super-resolution mapping (SRM) technique. Super-resolution mapping, based on the spatial attraction model (SRMSAM), has been an important SRM method, due to its simplicity and explicit physical meanings. However, the resolution of the original remote sensing image is coarse, and the existing SRMSAM cannot take full advantage of the spatial⁻spectral information from the original image. To utilize more spatial⁻spectral information, improving remote sensing image super-resolution mapping based on the spatial attraction model by utilizing the pansharpening technique (SRMSAM-PAN) is proposed. In SRMSAM-PAN, a novel processing path, named the pansharpe...
Super-resolution mapping (SRM) is an ill-posed problem, and different SRM algorithms may generate no...
International audienceThis article presents a fully spatially adaptive Markov random field (MRF)-bas...
Mixed pixels could be considered as a major source of uncertainty through classification process of ...
Super-resolution mapping (SRM) is a technique to obtain sub-pixel resolution thematic map (SRTM). So...
Pansharpening, which fuses the panchromatic (PAN) band with multispectral (MS) bands to obtain an MS...
Super-resolution mapping (SRM) is an ill-posed problem, and different SRM algorithms may generate no...
Super-resolution mapping (SRM) is a recently developed research task in the field of remotely sensed...
In remote sensing, images acquired by various earth observation satellites tend to have either a hig...
Spatial resolution of land covers from remotely sensed images can be increased using super-resolutio...
Super-resolution techniques can be used to increase the spatial resolution of the imagery. Although ...
Super-resolution mapping (SRM) is a method to produce a fine spatial resolution land cover map from ...
Pansharpening algorithms are designed to enhance the spatial resolution of multispectral images usin...
Super-resolution mapping (SRM) is a method to produce a fine spatial resolution land cover map from ...
Super-resolution mapping (SRM) is an ill-posed problem, and different SRM algorithms may generate no...
A new superresolution mapping (SRM) method based on high-accuracy surface modeling (HASM) is propose...
Super-resolution mapping (SRM) is an ill-posed problem, and different SRM algorithms may generate no...
International audienceThis article presents a fully spatially adaptive Markov random field (MRF)-bas...
Mixed pixels could be considered as a major source of uncertainty through classification process of ...
Super-resolution mapping (SRM) is a technique to obtain sub-pixel resolution thematic map (SRTM). So...
Pansharpening, which fuses the panchromatic (PAN) band with multispectral (MS) bands to obtain an MS...
Super-resolution mapping (SRM) is an ill-posed problem, and different SRM algorithms may generate no...
Super-resolution mapping (SRM) is a recently developed research task in the field of remotely sensed...
In remote sensing, images acquired by various earth observation satellites tend to have either a hig...
Spatial resolution of land covers from remotely sensed images can be increased using super-resolutio...
Super-resolution techniques can be used to increase the spatial resolution of the imagery. Although ...
Super-resolution mapping (SRM) is a method to produce a fine spatial resolution land cover map from ...
Pansharpening algorithms are designed to enhance the spatial resolution of multispectral images usin...
Super-resolution mapping (SRM) is a method to produce a fine spatial resolution land cover map from ...
Super-resolution mapping (SRM) is an ill-posed problem, and different SRM algorithms may generate no...
A new superresolution mapping (SRM) method based on high-accuracy surface modeling (HASM) is propose...
Super-resolution mapping (SRM) is an ill-posed problem, and different SRM algorithms may generate no...
International audienceThis article presents a fully spatially adaptive Markov random field (MRF)-bas...
Mixed pixels could be considered as a major source of uncertainty through classification process of ...