In linear image restoration, the point spread function of the degrading system is assumed known even though this information is usually not available in real applications. As a result, both blur identification and image restoration must be performed from the observed noisy blurred image. This paper presents a computationally simple iterative blind image deconvolution method which is based on non-linear adaptive filtering. The new method is applicable to minimum as well as mixed phase blurs. The noisy blurred image is assumed to be the output of a two-dimensional linear shift-invariant system with an unknown point spread function contaminated by an additive noise. The method passes the noisy blurred image through a two-dimensional finite imp...
Blind deconvolution refers to the process of recovering the original image from the blurred image wh...
An improved blind deconvolution algorithm has been proposed to tackle the image blurring caused by m...
Image de-blurring is an inverse problem whose intent is to recover an image from the image affected ...
A new non-linear adaptive filter called blind image deconvolution via dispersion minimization has re...
The restoration of a blurred image in a practical imaging system is critically dependent on the syst...
Blurring is a common artifact that produces distorted images with unavoidable information loss. The ...
Successful blind image deconvolution algorithms require the exact estimation of the Point Spread Fun...
This paper presents an adaptive autoregressive (AR) approach to the blind image deconvolution proble...
Traditional nonlinear filtering techniques are observed in underutilization of blur identification t...
Successful blind image deconvolution algorithms require the exact estimation of the Point Spread Fun...
Abstract — Observed images of a scene are usually degraded by blurring due to atmospheric turbulence...
Image deblurring has long been modeled as a deconvolution problem. In the literature, the point-spre...
Abstract: Image restoration algorithms are used to reconstruct the information that is suppressed wh...
This paper examines a super-exponential method for blind deconvolution. Possibly non-minimal phase p...
A new method to perform blind image deblurring is proposed. Very few assumptions are made on the blu...
Blind deconvolution refers to the process of recovering the original image from the blurred image wh...
An improved blind deconvolution algorithm has been proposed to tackle the image blurring caused by m...
Image de-blurring is an inverse problem whose intent is to recover an image from the image affected ...
A new non-linear adaptive filter called blind image deconvolution via dispersion minimization has re...
The restoration of a blurred image in a practical imaging system is critically dependent on the syst...
Blurring is a common artifact that produces distorted images with unavoidable information loss. The ...
Successful blind image deconvolution algorithms require the exact estimation of the Point Spread Fun...
This paper presents an adaptive autoregressive (AR) approach to the blind image deconvolution proble...
Traditional nonlinear filtering techniques are observed in underutilization of blur identification t...
Successful blind image deconvolution algorithms require the exact estimation of the Point Spread Fun...
Abstract — Observed images of a scene are usually degraded by blurring due to atmospheric turbulence...
Image deblurring has long been modeled as a deconvolution problem. In the literature, the point-spre...
Abstract: Image restoration algorithms are used to reconstruct the information that is suppressed wh...
This paper examines a super-exponential method for blind deconvolution. Possibly non-minimal phase p...
A new method to perform blind image deblurring is proposed. Very few assumptions are made on the blu...
Blind deconvolution refers to the process of recovering the original image from the blurred image wh...
An improved blind deconvolution algorithm has been proposed to tackle the image blurring caused by m...
Image de-blurring is an inverse problem whose intent is to recover an image from the image affected ...