Image superresolution (SR) is the process of enlarging and enhancing a low-resolution image. Image superresolution helps in industrial image enhancement, classification, detection, pattern recognition, surveillance, satellite imaging, medical diagnosis, image analytics, etc. It is of utmost importance to keep the features of the low-resolution image intact while enlarging and enhancing it. In this research paper, a framework is proposed that works in three phases and generates superresolution images while keeping low-resolution image features intact and reducing image blurring and artifacts. In the first phase, image enlargement is done, which enlarges the low-resolution image to the 2x/4x scale using two standard algorithms. The second pha...
Recent single image super resolution (SISR) studies were conducted extensively on small upscaling fa...
Abstract A stable enhanced superresolution generative adversarial network (SESRGAN) algorithm was pr...
The accuracy and speed of a single image super-resolution using a convolutional neural network is of...
Aiming at the problems of over-fitting of existing convolutional neural network image super-resoluti...
Image super-resolution reconstruction has been widely used in remote sensing, medicine and other fie...
Image denoising and image super-resolution reconstruction are two important techniques for image pro...
Single image super-resolution (SISR) has played an important role in the field of image processing. ...
The super-resolution reconstruction method based on deep convolutional neural network has a high pea...
Traditional super-resolution (SR) methods by minimize the mean square error usually produce images w...
Super-Resolution (SR) of a single image is a classic problem in computer vision. The goal of image s...
International audienceThe high-resolution magnetic resonance image (MRI) provides detailed anatomica...
Low-resolution image enhancement has long been in the public’s consciousness. Television shows, movi...
We proposed an Enhanced Face Image Generative Adversarial Network (EFGAN). Single image super-resolu...
In recent years, the interest in image super-resolution is increased sharply developing the field of...
Low-resolution image enhancement has long been in the public’s consciousness. Television shows, movi...
Recent single image super resolution (SISR) studies were conducted extensively on small upscaling fa...
Abstract A stable enhanced superresolution generative adversarial network (SESRGAN) algorithm was pr...
The accuracy and speed of a single image super-resolution using a convolutional neural network is of...
Aiming at the problems of over-fitting of existing convolutional neural network image super-resoluti...
Image super-resolution reconstruction has been widely used in remote sensing, medicine and other fie...
Image denoising and image super-resolution reconstruction are two important techniques for image pro...
Single image super-resolution (SISR) has played an important role in the field of image processing. ...
The super-resolution reconstruction method based on deep convolutional neural network has a high pea...
Traditional super-resolution (SR) methods by minimize the mean square error usually produce images w...
Super-Resolution (SR) of a single image is a classic problem in computer vision. The goal of image s...
International audienceThe high-resolution magnetic resonance image (MRI) provides detailed anatomica...
Low-resolution image enhancement has long been in the public’s consciousness. Television shows, movi...
We proposed an Enhanced Face Image Generative Adversarial Network (EFGAN). Single image super-resolu...
In recent years, the interest in image super-resolution is increased sharply developing the field of...
Low-resolution image enhancement has long been in the public’s consciousness. Television shows, movi...
Recent single image super resolution (SISR) studies were conducted extensively on small upscaling fa...
Abstract A stable enhanced superresolution generative adversarial network (SESRGAN) algorithm was pr...
The accuracy and speed of a single image super-resolution using a convolutional neural network is of...