A maximum a posteriori (MAP) estimation method for improving the spatial resolution of a hyperspectral image using a higher resolution auxiliary image is extended to address several practical remote sensing situations. These include cases where: 1) the spectral response of the auxiliary image is unknown and does not match that of the hyperspectral image; 2) the auxiliary image is multispectral; and 3) the spatial point spread function for the hyperspectral sensor is arbitrary and extends beyond the span of the detector elements. The research presented follows a previously reported MAP approach that makes use of a stochastic mixing model (SMM) of the underlying spectral scene content to achieve resolution enhancement beyond the intensity com...
In this paper, a new method is presented for spatial resolution enhancement of hyperspectral images ...
In the recent past, remotely sensed data with high spectral resolution has been made available and h...
Hyperspectral data pose challenges to image interpretation, because of the need for calibration, red...
A maximum a posteriori (MAP) estimation method is described for enhancing the spatial resolution of ...
This paper presents a novel maximum a posteriori (MAP) estimator for enhancing the spatial resolutio...
Hyperspectral imaging is widely used in many fields such as geology, medicine, meteorology, and so o...
In this paper, we propose a novel single image Bayesian super-resolution (SR) algorithm where the hy...
In the recent past, remotely sensed data with high spectral resolution has been made available and h...
International audienceHyperspectral imaging is a continuously growing area of remote sensing. Hypers...
In this paper a novel approach is presented for spectral un-mixing in hyperspectral remote sensing i...
Hyperspectral imaging sensors exibit high spectral resolution, but normally low spatial resolution. ...
Hyperspectral (HS) remote sensing has an important role in a wide variety of fields. However, its ra...
Hyperspectral images with hundreds of spectral bands have been proven to yield high performance in m...
Hyperspectral (HS) imagery consists of hundred of narrow contiguous bands extending beyond the visib...
Super-resolution techniques can be used to increase the spatial resolution of the imagery. Although ...
In this paper, a new method is presented for spatial resolution enhancement of hyperspectral images ...
In the recent past, remotely sensed data with high spectral resolution has been made available and h...
Hyperspectral data pose challenges to image interpretation, because of the need for calibration, red...
A maximum a posteriori (MAP) estimation method is described for enhancing the spatial resolution of ...
This paper presents a novel maximum a posteriori (MAP) estimator for enhancing the spatial resolutio...
Hyperspectral imaging is widely used in many fields such as geology, medicine, meteorology, and so o...
In this paper, we propose a novel single image Bayesian super-resolution (SR) algorithm where the hy...
In the recent past, remotely sensed data with high spectral resolution has been made available and h...
International audienceHyperspectral imaging is a continuously growing area of remote sensing. Hypers...
In this paper a novel approach is presented for spectral un-mixing in hyperspectral remote sensing i...
Hyperspectral imaging sensors exibit high spectral resolution, but normally low spatial resolution. ...
Hyperspectral (HS) remote sensing has an important role in a wide variety of fields. However, its ra...
Hyperspectral images with hundreds of spectral bands have been proven to yield high performance in m...
Hyperspectral (HS) imagery consists of hundred of narrow contiguous bands extending beyond the visib...
Super-resolution techniques can be used to increase the spatial resolution of the imagery. Although ...
In this paper, a new method is presented for spatial resolution enhancement of hyperspectral images ...
In the recent past, remotely sensed data with high spectral resolution has been made available and h...
Hyperspectral data pose challenges to image interpretation, because of the need for calibration, red...