Generally, there are mainly two methods to solve the image restoration task in low-level computer vision, i.e., the model-based optimization method and the discriminative learning method. However, these two methods have clear advantages and disadvantages. For example, it is flexible for the model-based optimization method to handle different problems, but large quantity of computing time is required for better performance. The discriminative learning approach has high computing efficiency, but the application scope is seriously limited by the fixed training model. It would be better to combine the advantages of these two methods. Luckily, with the variable splitting techniques, we insert the trained convolutional neural network (CNN) for de...
Layer decomposition to separate an input image into base and detail layers has been steadily used fo...
This paper proposes a method for recovering the intrinsic details of an image that cannot be reconst...
This paper presents a new approach to Single Image Super Resolution (SISR), based upon Convolutional...
In the thesis, we have implemented different neural network approaches to solve image restoration an...
This paper presents a new variational inference framework for image restoration and a convolutional ...
In this paper, we propose a very deep fully convolutional encoding-decoding framework for image rest...
The images to be used in many of the real-life applications, such as medical imaging, intelligent tr...
Image denoising and image super-resolution reconstruction are two important techniques for image pro...
Image restoration using deep learning attempts to create an image recovery system that can restore o...
Image degradation, such as blurring, or various sources of noise are common reasons for distortion h...
Neural-network-based image denoising is one of the promising approaches to deal with problems in ima...
Image deblurring is a challenging task that aims to restore a sharp and clear image from a blurred o...
Image restoration is a process that restores a degraded image to its original or near original form....
We propose a new image restoration method that reduces noise and blur in degraded images. In contras...
Recently multiple high performance algorithms have been developed to infer high-resolution images fr...
Layer decomposition to separate an input image into base and detail layers has been steadily used fo...
This paper proposes a method for recovering the intrinsic details of an image that cannot be reconst...
This paper presents a new approach to Single Image Super Resolution (SISR), based upon Convolutional...
In the thesis, we have implemented different neural network approaches to solve image restoration an...
This paper presents a new variational inference framework for image restoration and a convolutional ...
In this paper, we propose a very deep fully convolutional encoding-decoding framework for image rest...
The images to be used in many of the real-life applications, such as medical imaging, intelligent tr...
Image denoising and image super-resolution reconstruction are two important techniques for image pro...
Image restoration using deep learning attempts to create an image recovery system that can restore o...
Image degradation, such as blurring, or various sources of noise are common reasons for distortion h...
Neural-network-based image denoising is one of the promising approaches to deal with problems in ima...
Image deblurring is a challenging task that aims to restore a sharp and clear image from a blurred o...
Image restoration is a process that restores a degraded image to its original or near original form....
We propose a new image restoration method that reduces noise and blur in degraded images. In contras...
Recently multiple high performance algorithms have been developed to infer high-resolution images fr...
Layer decomposition to separate an input image into base and detail layers has been steadily used fo...
This paper proposes a method for recovering the intrinsic details of an image that cannot be reconst...
This paper presents a new approach to Single Image Super Resolution (SISR), based upon Convolutional...