The problem of restoring a signal or image is often tantamount to approximating the solution of a linear inverse ill-posed problem. In order to find such an approximation one might regularize the problem by penalizing variations on the estimated solution. Among the wide variety of methods available to perform this penalization, the most commonly used is the Tikhonov-Phillips regularization, which is appropriate when the sought signal or image is expected to be smooth, but it results unsuitable whenever preservation of discontinuities and edges is an important matter. Nonetheless, there are other methods with edge preserving properties, such as bounded variation (BV) regularization. However, these methods tend to produce piecewise constant s...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
To keep structures in the restoration problem is very important via coupling the local information o...
Several generalizations of the traditional Tikhonov-Phillips regularization method have been propose...
During the last two decades several generalizations of the traditional Tikhonov-Phillips regularizat...
The Tikhonov-Phillips method is widely used for regularizing ill-posed problems due to the simplicit...
AbstractHere we examine the partial regularity of minimizers of a functional used for image restorat...
The article addresses a wide class of image deconvolution or reconstruction situations where a sough...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
Abstract. We present a new mixed regularization method for image recovery. The method is based on th...
Abstract—A popular way to restore images comprising edges is to minimize a cost function combining a...
The reconstruction of an image u(x, y) that describes a real scene from experimen-tal data (observed...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
To keep structures in the restoration problem is very important via coupling the local information o...
Several generalizations of the traditional Tikhonov-Phillips regularization method have been propose...
During the last two decades several generalizations of the traditional Tikhonov-Phillips regularizat...
The Tikhonov-Phillips method is widely used for regularizing ill-posed problems due to the simplicit...
AbstractHere we examine the partial regularity of minimizers of a functional used for image restorat...
The article addresses a wide class of image deconvolution or reconstruction situations where a sough...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
Abstract. We present a new mixed regularization method for image recovery. The method is based on th...
Abstract—A popular way to restore images comprising edges is to minimize a cost function combining a...
The reconstruction of an image u(x, y) that describes a real scene from experimen-tal data (observed...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
We present a new mixed regularization method for image recovery. The method is based on the combinat...
To keep structures in the restoration problem is very important via coupling the local information o...