International audienceHyperspectral images acquired by remote sensing systems are generally degraded by noise and can be sometimes more severely degraded by blur. When no knowledge is available about the degradations present on the original image, blind restoration methods can only be considered. By blind, we mean absolutely no knowledge neither of the blur point spread function (PSF) nor the original latent channel and the noise level. In this study, we address the blind restoration of the degraded channels component-wise, according to a sequential scheme. For each degraded channel, the sequential scheme estimates the blur point spread function (PSF) in a first stage and deconvolves the degraded channel in a second and final stage by means...
This report describes the results of two preliminary tests. One was a test with a previously reporte...
Because of the resolution limitations in remote sensing, the radiance recorded by the detector at ea...
The first step in signal processing is to find an appropriate model for the observed signal. This is...
International audienceHyperspectral images acquired by remote sensing systems are generally degraded...
International audienceImage restoration is a necessary stage in the processing of remotely sensed hy...
International audienceHyperspectral images acquired by remote sensing systems are generally degraded...
International audienceHyperspectral images acquired by remote sensing systems are generally degraded...
Blurring is a common artifact that produces distorted images with unavoidable information loss. The ...
This paper examines a super-exponential method for blind deconvolution. Possibly non-minimal phase p...
In this paper, a blind restoration method is presented to remove the blur in remote sensing images....
Traditional nonlinear filtering techniques are observed in underutilization of blur identification t...
Single-image blind deblurring for imaging sensors in the Internet of Things (IoT) is a challenging i...
In this paper, a blind restoration method is presented to remove the blur in remote sensing images....
The identification of the point spread function (PSF) from the degraded image data constitutes an im...
The remote sensing imaging environment is complex, in which many factors cause image blur. Thus, wit...
This report describes the results of two preliminary tests. One was a test with a previously reporte...
Because of the resolution limitations in remote sensing, the radiance recorded by the detector at ea...
The first step in signal processing is to find an appropriate model for the observed signal. This is...
International audienceHyperspectral images acquired by remote sensing systems are generally degraded...
International audienceImage restoration is a necessary stage in the processing of remotely sensed hy...
International audienceHyperspectral images acquired by remote sensing systems are generally degraded...
International audienceHyperspectral images acquired by remote sensing systems are generally degraded...
Blurring is a common artifact that produces distorted images with unavoidable information loss. The ...
This paper examines a super-exponential method for blind deconvolution. Possibly non-minimal phase p...
In this paper, a blind restoration method is presented to remove the blur in remote sensing images....
Traditional nonlinear filtering techniques are observed in underutilization of blur identification t...
Single-image blind deblurring for imaging sensors in the Internet of Things (IoT) is a challenging i...
In this paper, a blind restoration method is presented to remove the blur in remote sensing images....
The identification of the point spread function (PSF) from the degraded image data constitutes an im...
The remote sensing imaging environment is complex, in which many factors cause image blur. Thus, wit...
This report describes the results of two preliminary tests. One was a test with a previously reporte...
Because of the resolution limitations in remote sensing, the radiance recorded by the detector at ea...
The first step in signal processing is to find an appropriate model for the observed signal. This is...