Because the characteristics of remotely sensed data vary greatly with the sensors, spectral and spatial resolutions are practically unique for each sensor. Therefore, there is a real need for a theoretical framework that aims at merging information from two or more different sources. In this paper, a new Bayesian data fusion (BDF) framework is used in order to tackle several classical remote sensing issues. This BDF framework is dedicated to spatial prediction, which draws new avenues for applications in remote sensing. An existing BDF method proposed for the pansharpening of IKONOS image is adapted in the case of SPOT 5 image. The BDF approach is then tested for the enhancement of the spatial resolution of coarse images with high-resolutio...
Abstract In this paper, a Bayesian fusion technique for remotely sensed multi-band images is present...
International audienceThe offer of high spectral and high spatial resolutions images has grown in th...
Abstract—The field of remote sensing is associated with an increasing amount of imagery data, missio...
Currently, most optical Earth observation satellites carry both a panchromatic sensor and a set of l...
Remote sensing provides rich sources of data for the monitoring of land surface dynamics. However, s...
Studies of land surface dynamics in heterogeneous landscapes often require satellite images with a h...
Contradictions in spatial resolution and temporal coverage emerge from earth observation remote sens...
During the last thirty years, new technologies have contributed to a drastic increase of the amount ...
High-spatial-resolution (HSR) images and high-temporal-resolution (HTR) images have their unique adv...
In spite of the exponential growth in the amount of data that one may expect to provide greater mode...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
In this letter, a general Bayesian data fusion (BDF) approach is proposed and applied to the spatial...
In a spatial mapping context, we address in this paper the issue of combining at best soil data comi...
In this paper, we discuss spatiotemporal data fusion methods in remote sensing. These methods fuse t...
In this paper, we discuss spatiotemporal data fusion methods in remote sensing. These methods fuse t...
Abstract In this paper, a Bayesian fusion technique for remotely sensed multi-band images is present...
International audienceThe offer of high spectral and high spatial resolutions images has grown in th...
Abstract—The field of remote sensing is associated with an increasing amount of imagery data, missio...
Currently, most optical Earth observation satellites carry both a panchromatic sensor and a set of l...
Remote sensing provides rich sources of data for the monitoring of land surface dynamics. However, s...
Studies of land surface dynamics in heterogeneous landscapes often require satellite images with a h...
Contradictions in spatial resolution and temporal coverage emerge from earth observation remote sens...
During the last thirty years, new technologies have contributed to a drastic increase of the amount ...
High-spatial-resolution (HSR) images and high-temporal-resolution (HTR) images have their unique adv...
In spite of the exponential growth in the amount of data that one may expect to provide greater mode...
Studies related to vegetation dynamics in heterogeneous landscapes often require Normalized Differen...
In this letter, a general Bayesian data fusion (BDF) approach is proposed and applied to the spatial...
In a spatial mapping context, we address in this paper the issue of combining at best soil data comi...
In this paper, we discuss spatiotemporal data fusion methods in remote sensing. These methods fuse t...
In this paper, we discuss spatiotemporal data fusion methods in remote sensing. These methods fuse t...
Abstract In this paper, a Bayesian fusion technique for remotely sensed multi-band images is present...
International audienceThe offer of high spectral and high spatial resolutions images has grown in th...
Abstract—The field of remote sensing is associated with an increasing amount of imagery data, missio...