Abstract. A prior knowledge about the distorting operator and its parameters is of crucial importance in blurred image restoration. In this paper the continuous-valued multilayer neural network based on multi-valued neurons (MLMVN) is exploited for identification of a type of blur among six trained blurs and of its parameters. This network has a number of specific properties and advantages. Its backpropagation learning algorithm does not require differentiability of the activation function. The functionality of the MLMVN is higher than the ones of the traditional feedforward neural networks and a variety of kernel-based networks. Its higher flexibility and faster adaptation to the mapping implemented make possible an accomplishment of compl...
Deep neural networks have recently demonstrated high performance for deblurring. However, few method...
Restoration of images degraded by unknown blur is a difficult problem. It is called blind image rest...
Today optical measuring devices are used in many applications. The measurement accuracy should be ve...
Abstract—A multilayer neural network based on multivalued neurons (MLMVN) is a neural network with a...
We propose a neural network architecture and a training procedure to estimate blurring operators and...
. We examine the problem of deconvolving blurred text. This is a task in which there is strong prior...
In this paper, a novel edge-parameter analysis method of the blur ’ identification based on the sing...
Image blur kernel estimation is critical to blind image deblurring. Most existing approaches exploit...
Image blur kernel classification and parameter estimation are critical for blind im-age deblurring. ...
We propose to train a neural network to estimate space varying blur operators from a single blurry i...
This work explores blind image deconvolution by recursive function approximation based on supervised...
A novel space-variant neural network based on an autoregressive moving average process is proposed f...
Super-resolution is the process by which the bandwidth of a diffraction-limited spectrum is extended...
This paper introduces a new learning-based approach to motion blur removal. A local linear motion mo...
Blur type identification is one of the most crucial step of image restoration. In case of blind rest...
Deep neural networks have recently demonstrated high performance for deblurring. However, few method...
Restoration of images degraded by unknown blur is a difficult problem. It is called blind image rest...
Today optical measuring devices are used in many applications. The measurement accuracy should be ve...
Abstract—A multilayer neural network based on multivalued neurons (MLMVN) is a neural network with a...
We propose a neural network architecture and a training procedure to estimate blurring operators and...
. We examine the problem of deconvolving blurred text. This is a task in which there is strong prior...
In this paper, a novel edge-parameter analysis method of the blur ’ identification based on the sing...
Image blur kernel estimation is critical to blind image deblurring. Most existing approaches exploit...
Image blur kernel classification and parameter estimation are critical for blind im-age deblurring. ...
We propose to train a neural network to estimate space varying blur operators from a single blurry i...
This work explores blind image deconvolution by recursive function approximation based on supervised...
A novel space-variant neural network based on an autoregressive moving average process is proposed f...
Super-resolution is the process by which the bandwidth of a diffraction-limited spectrum is extended...
This paper introduces a new learning-based approach to motion blur removal. A local linear motion mo...
Blur type identification is one of the most crucial step of image restoration. In case of blind rest...
Deep neural networks have recently demonstrated high performance for deblurring. However, few method...
Restoration of images degraded by unknown blur is a difficult problem. It is called blind image rest...
Today optical measuring devices are used in many applications. The measurement accuracy should be ve...